Face Generation

In this project, you'll use generative adversarial networks to generate new images of faces.

Get the Data

You'll be using two datasets in this project:

  • MNIST
  • CelebA

Since the celebA dataset is complex and you're doing GANs in a project for the first time, we want you to test your neural network on MNIST before CelebA. Running the GANs on MNIST will allow you to see how well your model trains sooner.

If you're using FloydHub, set data_dir to "/input" and use the FloydHub data ID "R5KrjnANiKVhLWAkpXhNBe".

In [1]:
data_dir = './data'

# FloydHub - Use with data ID "R5KrjnANiKVhLWAkpXhNBe"
#data_dir = '/input'


"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
import helper

helper.download_extract('mnist', data_dir)
helper.download_extract('celeba', data_dir)
Found mnist Data
Found celeba Data

Explore the Data

MNIST

As you're aware, the MNIST dataset contains images of handwritten digits. You can view the first number of examples by changing show_n_images.

In [2]:
show_n_images = 25

"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
%matplotlib inline
import os
from glob import glob
from matplotlib import pyplot

mnist_images = helper.get_batch(glob(os.path.join(data_dir, 'mnist/*.jpg'))[:show_n_images], 28, 28, 'L')
pyplot.imshow(helper.images_square_grid(mnist_images, 'L'), cmap='gray')
Out[2]:
<<<<<<< HEAD
<matplotlib.image.AxesImage at 0x7fd4ecab0828>
=======
<matplotlib.image.AxesImage at 0x7fd00c513908>
>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250

CelebA

The CelebFaces Attributes Dataset (CelebA) dataset contains over 200,000 celebrity images with annotations. Since you're going to be generating faces, you won't need the annotations. You can view the first number of examples by changing show_n_images.

In [3]:
show_n_images = 25

"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
mnist_images = helper.get_batch(glob(os.path.join(data_dir, 'img_align_celeba/*.jpg'))[:show_n_images], 28, 28, 'RGB')
pyplot.imshow(helper.images_square_grid(mnist_images, 'RGB'))
Out[3]:
<<<<<<< HEAD
<matplotlib.image.AxesImage at 0x7fd4ec9de470>
=======
<matplotlib.image.AxesImage at 0x7fd00c440518>
>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250

Preprocess the Data

Since the project's main focus is on building the GANs, we'll preprocess the data for you. The values of the MNIST and CelebA dataset will be in the range of -0.5 to 0.5 of 28x28 dimensional images. The CelebA images will be cropped to remove parts of the image that don't include a face, then resized down to 28x28.

The MNIST images are black and white images with a single color channel while the CelebA images have 3 color channels (RGB color channel).

Build the Neural Network

You'll build the components necessary to build a GANs by implementing the following functions below:

  • model_inputs
  • discriminator
  • generator
  • model_loss
  • model_opt
  • train

Check the Version of TensorFlow and Access to GPU

This will check to make sure you have the correct version of TensorFlow and access to a GPU

In [4]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
from distutils.version import LooseVersion
import warnings
import tensorflow as tf

# Check TensorFlow Version
assert LooseVersion(tf.__version__) >= LooseVersion('1.0'), 'Please use TensorFlow version 1.0 or newer.  You are using {}'.format(tf.__version__)
print('TensorFlow Version: {}'.format(tf.__version__))

# Check for a GPU
if not tf.test.gpu_device_name():
    warnings.warn('No GPU found. Please use a GPU to train your neural network.')
else:
    print('Default GPU Device: {}'.format(tf.test.gpu_device_name()))
TensorFlow Version: 1.1.0
Default GPU Device: /gpu:0

Input

Implement the model_inputs function to create TF Placeholders for the Neural Network. It should create the following placeholders:

  • Real input images placeholder with rank 4 using image_width, image_height, and image_channels.
  • Z input placeholder with rank 2 using z_dim.
  • Learning rate placeholder with rank 0.

Return the placeholders in the following the tuple (tensor of real input images, tensor of z data)

In [5]:
import problem_unittests as tests

def model_inputs(image_width, image_height, image_channels, z_dim):
    """
    Create the model inputs
    :param image_width: The input image width
    :param image_height: The input image height
    :param image_channels: The number of image channels
    :param z_dim: The dimension of Z
    :return: Tuple of (tensor of real input images, tensor of z data, learning rate)
    """
    # TODO: Implement Function
    inputs_image = tf.placeholder(tf.float32,(None,image_width,image_height,image_channels),name='inputs_image')
    inputs_z = tf.placeholder(tf.float32, (None, z_dim),name='inputs_z')
    learning_rate = tf.placeholder(tf.float32,name='learning_rate')
    return (inputs_image, inputs_z, learning_rate)


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_model_inputs(model_inputs)
Tests Passed

Discriminator

Implement discriminator to create a discriminator neural network that discriminates on images. This function should be able to reuse the variables in the neural network. Use tf.variable_scope with a scope name of "discriminator" to allow the variables to be reused. The function should return a tuple of (tensor output of the discriminator, tensor logits of the discriminator).

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def discriminator(images, reuse=False):
    """
    Create the discriminator network
    :param images: Tensor of input image(s)
    :param reuse: Boolean if the weights should be reused
    :return: Tuple of (tensor output of the discriminator, tensor logits of the discriminator)
    """
    # TODO: Implement Function
    # Input layer is 28x28x3
    alpha = 0.2
    with tf.variable_scope('discriminator', reuse = reuse):
        
        x1 = tf.layers.conv2d(images, 64, 5, strides=2, padding='same')
        x1 = tf.maximum(alpha * x1, x1)
        #x1 = tf.nn.dropout(x1, 0.5)
        # 14x14x64
        
        x2 = tf.layers.conv2d(x1, 128, 5, strides=2, padding='same')
        x2 = tf.layers.batch_normalization(x2, training=True)
        x2 = tf.maximum(alpha * x2, x2)
        #x2 = tf.nn.dropout(x2, 0.5)
        # 7x7x128
        
        x3 = tf.layers.conv2d(x2, 256, 5, strides=2, padding='same')
        x3 = tf.layers.batch_normalization(x3, training=True)
        x3 = tf.maximum(alpha * x3, x3)
        #x3 = tf.nn.dropout(x3, 0.5)
        # 4x4x256
        
        x4 = tf.layers.conv2d(x3, 256, 5, strides=2, padding='same')
        x4 = tf.layers.batch_normalization(x3, training=True)
        x4 = tf.maximum(alpha * x4, x4)
        #x4 = tf.nn.dropout(x4, 0.5)
        # 2x2x256
        
        # Flatten it
        flat = tf.reshape(x4, (-1, 2*2*256))
        logits = tf.layers.dense(flat, 1)
        out = tf.sigmoid(logits)
        
    return out, logits


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_discriminator(discriminator, tf)
Tests Passed

Generator

Implement generator to generate an image using z. This function should be able to reuse the variables in the neural network. Use tf.variable_scope with a scope name of "generator" to allow the variables to be reused. The function should return the generated 28 x 28 x out_channel_dim images.

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def generator(z, out_channel_dim, is_train=True):
    """
    Create the generator network
    :param z: Input z
    :param out_channel_dim: The number of channels in the output image
    :param is_train: Boolean if generator is being used for training
    :return: The tensor output of the generator
    """
    # TODO: Implement Function
    
    alpha = 0.2
    with tf.variable_scope("generator", reuse = not is_train):
        # First fully connected layer
        x1 = tf.layers.dense(z, 7*7*512)
        # Reshape it to start the convolutional stack
        x1 = tf.reshape(x1, (-1, 7, 7, 512))
        x1 = tf.layers.batch_normalization(x1, training = is_train)
        x1 = tf.maximum(alpha * x1, x1)
        # 7x7x512
        
        x2 = tf.layers.conv2d_transpose(x1, 256, 5, strides = 1, padding = 'same')
        x2 = tf.layers.batch_normalization(x2, training = is_train)
        x2 = tf.maximum(alpha * x2, x2)
        # 7x7x256
        
        x3 = tf.layers.conv2d_transpose(x2, 128, 5, strides = 1, padding = 'same')
        x3 = tf.layers.batch_normalization(x3, training = is_train)
        x3 = tf.maximum(alpha * x3, x3)
        # 7x7x128
        
        x4 = tf.layers.conv2d_transpose(x3, 64, 5, strides = 2, padding = 'same')
        x4 = tf.layers.batch_normalization(x4, training = is_train)
        x4 = tf.maximum(alpha * x4, x4)
        # 28x28x64

        # Output layer
        logits = tf.layers.conv2d_transpose(x4, out_channel_dim, 5, strides = 2, padding = 'same')
        

        out = tf.tanh(logits)
    return out


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_generator(generator, tf)
Tests Passed

Loss

Implement model_loss to build the GANs for training and calculate the loss. The function should return a tuple of (discriminator loss, generator loss). Use the following functions you implemented:

  • discriminator(images, reuse=False)
  • generator(z, out_channel_dim, is_train=True)
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def model_loss(input_real, input_z, out_channel_dim):
    """
    Get the loss for the discriminator and generator
    :param input_real: Images from the real dataset
    :param input_z: Z input
    :param out_channel_dim: The number of channels in the output image
    :return: A tuple of (discriminator loss, generator loss)
    """
    # TODO: Implement Function
    g_model = generator(input_z, out_channel_dim, is_train=True)
    d_model_real, d_logits_real = discriminator(input_real, reuse=False)
    d_model_fake, d_logits_fake = discriminator(g_model, reuse=True)

    d_loss_real = tf.reduce_mean( # Add smoothing
        tf.nn.sigmoid_cross_entropy_with_logits(logits=d_logits_real, labels=tf.ones_like(d_model_real)*0.9))
    d_loss_fake = tf.reduce_mean(
        tf.nn.sigmoid_cross_entropy_with_logits(logits=d_logits_fake, labels=tf.zeros_like(d_model_fake)))
    g_loss = tf.reduce_mean(
        tf.nn.sigmoid_cross_entropy_with_logits(logits=d_logits_fake, labels=tf.ones_like(d_model_fake)))

    d_loss = d_loss_real + d_loss_fake

    return d_loss, g_loss

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_model_loss(model_loss)
Tests Passed

Optimization

Implement model_opt to create the optimization operations for the GANs. Use tf.trainable_variables to get all the trainable variables. Filter the variables with names that are in the discriminator and generator scope names. The function should return a tuple of (discriminator training operation, generator training operation).

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def model_opt(d_loss, g_loss, learning_rate, beta1):
    """
    Get optimization operations
    :param d_loss: Discriminator loss Tensor
    :param g_loss: Generator loss Tensor
    :param learning_rate: Learning Rate Placeholder
    :param beta1: The exponential decay rate for the 1st moment in the optimizer
    :return: A tuple of (discriminator training operation, generator training operation)
    """
    # TODO: Implement Function
    
    # Get weights and bias to update
    t_vars = tf.trainable_variables()
    d_vars = [var for var in t_vars if var.name.startswith('discriminator')]
    g_vars = [var for var in t_vars if var.name.startswith('generator')]

    # Optimize
    with tf.control_dependencies(tf.get_collection(tf.GraphKeys.UPDATE_OPS)):
        d_train_opt = tf.train.AdamOptimizer(learning_rate, beta1=beta1).minimize(d_loss, var_list=d_vars)
        g_train_opt = tf.train.AdamOptimizer(learning_rate, beta1=beta1).minimize(g_loss, var_list=g_vars)

    return d_train_opt, g_train_opt
    

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_model_opt(model_opt, tf)
Tests Passed

Neural Network Training

Show Output

Use this function to show the current output of the generator during training. It will help you determine how well the GANs is training.

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"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
import numpy as np

def show_generator_output(sess, n_images, input_z, out_channel_dim, image_mode):
    """
    Show example output for the generator
    :param sess: TensorFlow session
    :param n_images: Number of Images to display
    :param input_z: Input Z Tensor
    :param out_channel_dim: The number of channels in the output image
    :param image_mode: The mode to use for images ("RGB" or "L")
    """
    cmap = None if image_mode == 'RGB' else 'gray'
    z_dim = input_z.get_shape().as_list()[-1]
    example_z = np.random.uniform(-1, 1, size=[n_images, z_dim])

    samples = sess.run(
        generator(input_z, out_channel_dim, False),
        feed_dict={input_z: example_z})

    images_grid = helper.images_square_grid(samples, image_mode)
    pyplot.imshow(images_grid, cmap=cmap)
    pyplot.show()

Train

Implement train to build and train the GANs. Use the following functions you implemented:

  • model_inputs(image_width, image_height, image_channels, z_dim)
  • model_loss(input_real, input_z, out_channel_dim)
  • model_opt(d_loss, g_loss, learning_rate, beta1)

Use the show_generator_output to show generator output while you train. Running show_generator_output for every batch will drastically increase training time and increase the size of the notebook. It's recommended to print the generator output every 100 batches.

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def train(epoch_count, batch_size, z_dim, learning_rate, beta1, get_batches, data_shape, data_image_mode):
    """
    Train the GAN
    :param epoch_count: Number of epochs
    :param batch_size: Batch Size
    :param z_dim: Z dimension
    :param learning_rate: Learning Rate
    :param beta1: The exponential decay rate for the 1st moment in the optimizer
    :param get_batches: Function to get batches
    :param data_shape: Shape of the data
    :param data_image_mode: The image mode to use for images ("RGB" or "L")
    """
    # TODO: Build Model
    # The inputs
    input_real, input_z, lr = model_inputs(data_shape[1], data_shape[2], data_shape[3], z_dim)

    d_loss, g_loss = model_loss(input_real, input_z, data_shape[3])
    d_opt, g_opt = model_opt(d_loss, g_loss, lr, beta1)
        
    with tf.Session() as sess:
        sess.run(tf.global_variables_initializer())
        for e in range(epochs):
            steps = 0
            for batch_images in get_batches(batch_size):
                steps += 1
                
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                #Resize batch image
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>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250
                batch_images = batch_images.reshape(batch_size, data_shape[1], data_shape[2], data_shape[3])
                batch_images = batch_images*2
                
                # Sample random noise for G
                batch_z = np.random.uniform(-1, 1, size=(batch_size, z_dim))

                # Run optimizers
                _ = sess.run(d_opt, feed_dict={input_real: batch_images, input_z: batch_z, lr: learning_rate})
                _ = sess.run(g_opt, feed_dict={input_real: batch_images, input_z: batch_z, lr: learning_rate})

                if steps % 10 == 0:
                    # At the end of each epoch, get the losses and print them out
                    train_loss_d = d_loss.eval({input_z: batch_z, input_real: batch_images})
                    train_loss_g = g_loss.eval({input_z: batch_z})

                    print("Epoch {}/{}...".format(e+1, epochs),
                          "Discriminator Loss: {:.4f}...".format(train_loss_d),
                          "Generator Loss: {:.4f}".format(train_loss_g))

                if steps % 100 == 0:
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                    # Show generated 25 pictures
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>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250
                    show_generator_output(sess, 25, input_z, data_shape[3], data_image_mode)

                

MNIST

Test your GANs architecture on MNIST. After 2 epochs, the GANs should be able to generate images that look like handwritten digits. Make sure the loss of the generator is lower than the loss of the discriminator or close to 0.

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In [23]:
batch_size = 32
z_dim = 100 # Reduced z_dim as suggested by a reviewer
learning_rate = 0.002
=======
In [16]:
batch_size = 32
z_dim = 200
learning_rate = 0.0001
>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250
beta1 = 0.5


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
epochs = 2

mnist_dataset = helper.Dataset('mnist', glob(os.path.join(data_dir, 'mnist/*.jpg')))
with tf.Graph().as_default():
    train(epochs, batch_size, z_dim, learning_rate, beta1, mnist_dataset.get_batches,
          mnist_dataset.shape, mnist_dataset.image_mode)
<<<<<<< HEAD
Epoch 1/2... Discriminator Loss: 1.0072... Generator Loss: 1.0120
Epoch 1/2... Discriminator Loss: 1.2838... Generator Loss: 0.6079
Epoch 1/2... Discriminator Loss: 0.4739... Generator Loss: 2.8979
Epoch 1/2... Discriminator Loss: 0.7768... Generator Loss: 2.5562
Epoch 1/2... Discriminator Loss: 0.8676... Generator Loss: 1.2272
Epoch 1/2... Discriminator Loss: 3.2516... Generator Loss: 0.1684
Epoch 1/2... Discriminator Loss: 0.6542... Generator Loss: 1.7679
Epoch 1/2... Discriminator Loss: 1.5303... Generator Loss: 0.5378
Epoch 1/2... Discriminator Loss: 1.0580... Generator Loss: 1.3985
Epoch 1/2... Discriminator Loss: 1.1796... Generator Loss: 1.3342
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Epoch 1/2... Discriminator Loss: 0.9266... Generator Loss: 1.1614
Epoch 1/2... Discriminator Loss: 1.3194... Generator Loss: 0.8954
Epoch 1/2... Discriminator Loss: 1.0759... Generator Loss: 1.0983
Epoch 1/2... Discriminator Loss: 1.7074... Generator Loss: 0.8620
Epoch 1/2... Discriminator Loss: 1.6602... Generator Loss: 0.5719
Epoch 1/2... Discriminator Loss: 1.6662... Generator Loss: 0.8577
Epoch 1/2... Discriminator Loss: 1.3286... Generator Loss: 1.0101
Epoch 1/2... Discriminator Loss: 1.5799... Generator Loss: 0.6402
Epoch 1/2... Discriminator Loss: 1.4269... Generator Loss: 1.1131
Epoch 1/2... Discriminator Loss: 1.3242... Generator Loss: 1.2079
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Epoch 1/2... Discriminator Loss: 1.3118... Generator Loss: 0.6999
Epoch 1/2... Discriminator Loss: 1.2643... Generator Loss: 0.6827
Epoch 1/2... Discriminator Loss: 1.0059... Generator Loss: 0.8787
Epoch 1/2... Discriminator Loss: 1.2340... Generator Loss: 1.4838
Epoch 1/2... Discriminator Loss: 1.3395... Generator Loss: 0.6885
Epoch 1/2... Discriminator Loss: 1.3592... Generator Loss: 0.6696
Epoch 1/2... Discriminator Loss: 0.9757... Generator Loss: 1.2342
Epoch 1/2... Discriminator Loss: 1.2651... Generator Loss: 1.0624
Epoch 1/2... Discriminator Loss: 1.1626... Generator Loss: 0.9620
Epoch 1/2... Discriminator Loss: 1.1917... Generator Loss: 0.8982
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Epoch 1/2... Discriminator Loss: 1.0583... Generator Loss: 1.2706
Epoch 1/2... Discriminator Loss: 0.7966... Generator Loss: 1.8003
Epoch 1/2... Discriminator Loss: 1.3565... Generator Loss: 1.1790
Epoch 1/2... Discriminator Loss: 1.3404... Generator Loss: 1.0428
Epoch 1/2... Discriminator Loss: 1.1480... Generator Loss: 1.2361
Epoch 1/2... Discriminator Loss: 1.7375... Generator Loss: 1.2602
Epoch 1/2... Discriminator Loss: 1.6231... Generator Loss: 1.0020
Epoch 1/2... Discriminator Loss: 1.8554... Generator Loss: 1.2379
Epoch 1/2... Discriminator Loss: 1.5913... Generator Loss: 0.7697
Epoch 1/2... Discriminator Loss: 1.4861... Generator Loss: 0.8897
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Epoch 1/2... Discriminator Loss: 1.0764... Generator Loss: 1.0344
Epoch 1/2... Discriminator Loss: 1.5610... Generator Loss: 0.5409
Epoch 1/2... Discriminator Loss: 1.4150... Generator Loss: 0.7380
Epoch 1/2... Discriminator Loss: 1.3748... Generator Loss: 1.2321
Epoch 1/2... Discriminator Loss: 1.2817... Generator Loss: 1.0942
Epoch 1/2... Discriminator Loss: 1.3471... Generator Loss: 0.7506
Epoch 1/2... Discriminator Loss: 1.2166... Generator Loss: 0.7751
Epoch 1/2... Discriminator Loss: 1.2037... Generator Loss: 1.4402
Epoch 1/2... Discriminator Loss: 1.1543... Generator Loss: 0.9034
Epoch 1/2... Discriminator Loss: 1.4695... Generator Loss: 0.5150
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Epoch 1/2... Discriminator Loss: 1.8932... Generator Loss: 0.8868
Epoch 1/2... Discriminator Loss: 1.3672... Generator Loss: 0.6550
Epoch 1/2... Discriminator Loss: 1.5288... Generator Loss: 1.1534
Epoch 1/2... Discriminator Loss: 1.3377... Generator Loss: 1.3727
Epoch 1/2... Discriminator Loss: 1.7554... Generator Loss: 1.4164
Epoch 1/2... Discriminator Loss: 1.2597... Generator Loss: 0.8429
Epoch 1/2... Discriminator Loss: 1.5235... Generator Loss: 1.1099
Epoch 1/2... Discriminator Loss: 1.4980... Generator Loss: 1.1432
Epoch 1/2... Discriminator Loss: 1.3569... Generator Loss: 1.0280
Epoch 1/2... Discriminator Loss: 1.5470... Generator Loss: 0.9300
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Epoch 1/2... Discriminator Loss: 1.1605... Generator Loss: 0.9492
Epoch 1/2... Discriminator Loss: 1.2113... Generator Loss: 0.8266
Epoch 1/2... Discriminator Loss: 1.1939... Generator Loss: 1.3585
Epoch 1/2... Discriminator Loss: 1.2359... Generator Loss: 0.8430
Epoch 1/2... Discriminator Loss: 1.1852... Generator Loss: 0.8414
Epoch 1/2... Discriminator Loss: 1.0833... Generator Loss: 1.1423
Epoch 1/2... Discriminator Loss: 1.1977... Generator Loss: 1.0550
Epoch 1/2... Discriminator Loss: 1.1591... Generator Loss: 0.9209
Epoch 1/2... Discriminator Loss: 1.2872... Generator Loss: 0.6731
Epoch 1/2... Discriminator Loss: 1.2451... Generator Loss: 0.8266
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Epoch 1/2... Discriminator Loss: 1.4398... Generator Loss: 1.1668
Epoch 1/2... Discriminator Loss: 1.5353... Generator Loss: 1.0222
Epoch 1/2... Discriminator Loss: 1.6830... Generator Loss: 1.3264
Epoch 1/2... Discriminator Loss: 1.5531... Generator Loss: 0.7167
Epoch 1/2... Discriminator Loss: 1.8419... Generator Loss: 0.7758
Epoch 1/2... Discriminator Loss: 1.6473... Generator Loss: 0.8206
Epoch 1/2... Discriminator Loss: 1.7413... Generator Loss: 0.8990
Epoch 1/2... Discriminator Loss: 1.3685... Generator Loss: 0.9859
Epoch 1/2... Discriminator Loss: 1.3507... Generator Loss: 1.1923
Epoch 1/2... Discriminator Loss: 1.3769... Generator Loss: 0.9004
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Epoch 1/2... Discriminator Loss: 1.2618... Generator Loss: 0.7975
Epoch 1/2... Discriminator Loss: 1.3102... Generator Loss: 1.1586
Epoch 1/2... Discriminator Loss: 1.2850... Generator Loss: 0.7246
Epoch 1/2... Discriminator Loss: 1.2163... Generator Loss: 0.8101
Epoch 1/2... Discriminator Loss: 1.3457... Generator Loss: 0.6449
Epoch 1/2... Discriminator Loss: 1.1321... Generator Loss: 1.0186
Epoch 1/2... Discriminator Loss: 1.1073... Generator Loss: 1.1102
Epoch 1/2... Discriminator Loss: 1.2850... Generator Loss: 0.6648
Epoch 1/2... Discriminator Loss: 1.4241... Generator Loss: 1.1655
Epoch 1/2... Discriminator Loss: 1.2226... Generator Loss: 1.0467
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Epoch 1/2... Discriminator Loss: 1.4805... Generator Loss: 0.8362
Epoch 1/2... Discriminator Loss: 1.5996... Generator Loss: 1.2763
Epoch 1/2... Discriminator Loss: 1.7831... Generator Loss: 1.2034
Epoch 1/2... Discriminator Loss: 1.6566... Generator Loss: 0.9242
Epoch 1/2... Discriminator Loss: 1.7624... Generator Loss: 0.9398
Epoch 1/2... Discriminator Loss: 1.3783... Generator Loss: 0.9832
Epoch 1/2... Discriminator Loss: 1.4391... Generator Loss: 1.1423
Epoch 1/2... Discriminator Loss: 1.6082... Generator Loss: 0.8495
Epoch 1/2... Discriminator Loss: 1.7898... Generator Loss: 0.7999
Epoch 1/2... Discriminator Loss: 1.5316... Generator Loss: 0.8496
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Epoch 1/2... Discriminator Loss: 1.1489... Generator Loss: 1.1426
Epoch 1/2... Discriminator Loss: 1.2554... Generator Loss: 0.9090
Epoch 1/2... Discriminator Loss: 1.1464... Generator Loss: 0.9416
Epoch 1/2... Discriminator Loss: 1.3117... Generator Loss: 0.9464
Epoch 1/2... Discriminator Loss: 1.0447... Generator Loss: 1.0599
Epoch 1/2... Discriminator Loss: 1.3747... Generator Loss: 1.0289
Epoch 1/2... Discriminator Loss: 1.2628... Generator Loss: 0.6769
Epoch 1/2... Discriminator Loss: 1.1728... Generator Loss: 0.8553
Epoch 1/2... Discriminator Loss: 1.1645... Generator Loss: 1.2864
Epoch 1/2... Discriminator Loss: 1.2297... Generator Loss: 0.6817
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Epoch 1/2... Discriminator Loss: 1.3828... Generator Loss: 0.8341
Epoch 1/2... Discriminator Loss: 1.4654... Generator Loss: 1.0751
Epoch 1/2... Discriminator Loss: 1.3980... Generator Loss: 1.1537
Epoch 1/2... Discriminator Loss: 1.3549... Generator Loss: 1.1665
Epoch 1/2... Discriminator Loss: 1.3698... Generator Loss: 1.1639
Epoch 1/2... Discriminator Loss: 1.1045... Generator Loss: 1.0324
Epoch 1/2... Discriminator Loss: 1.1488... Generator Loss: 1.3963
Epoch 1/2... Discriminator Loss: 1.3173... Generator Loss: 0.9399
Epoch 1/2... Discriminator Loss: 1.4716... Generator Loss: 1.0304
Epoch 1/2... Discriminator Loss: 1.3113... Generator Loss: 1.1214
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Epoch 1/2... Discriminator Loss: 1.2269... Generator Loss: 1.0520
Epoch 1/2... Discriminator Loss: 1.3005... Generator Loss: 0.5955
Epoch 1/2... Discriminator Loss: 1.2483... Generator Loss: 0.8011
Epoch 1/2... Discriminator Loss: 1.1756... Generator Loss: 0.8369
Epoch 1/2... Discriminator Loss: 1.1558... Generator Loss: 1.1518
Epoch 1/2... Discriminator Loss: 1.3751... Generator Loss: 0.5582
Epoch 1/2... Discriminator Loss: 1.2852... Generator Loss: 0.6507
Epoch 1/2... Discriminator Loss: 1.2255... Generator Loss: 0.7582
Epoch 1/2... Discriminator Loss: 1.2803... Generator Loss: 1.0170
Epoch 1/2... Discriminator Loss: 1.1951... Generator Loss: 1.1055
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Epoch 1/2... Discriminator Loss: 1.5185... Generator Loss: 0.9969
Epoch 1/2... Discriminator Loss: 1.4133... Generator Loss: 0.8649
Epoch 1/2... Discriminator Loss: 1.4754... Generator Loss: 1.0239
Epoch 1/2... Discriminator Loss: 1.6251... Generator Loss: 1.0324
Epoch 1/2... Discriminator Loss: 1.3917... Generator Loss: 0.8490
Epoch 1/2... Discriminator Loss: 1.4011... Generator Loss: 1.0940
Epoch 1/2... Discriminator Loss: 1.2806... Generator Loss: 0.9113
Epoch 1/2... Discriminator Loss: 1.5159... Generator Loss: 0.7988
Epoch 1/2... Discriminator Loss: 1.5184... Generator Loss: 1.3185
Epoch 1/2... Discriminator Loss: 1.2361... Generator Loss: 1.1318
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Epoch 1/2... Discriminator Loss: 1.3261... Generator Loss: 0.6954
Epoch 1/2... Discriminator Loss: 1.2558... Generator Loss: 0.6526
Epoch 1/2... Discriminator Loss: 1.1849... Generator Loss: 0.7220
Epoch 1/2... Discriminator Loss: 1.0136... Generator Loss: 1.4833
Epoch 1/2... Discriminator Loss: 1.1579... Generator Loss: 1.0967
Epoch 1/2... Discriminator Loss: 1.0360... Generator Loss: 0.9869
Epoch 1/2... Discriminator Loss: 1.3281... Generator Loss: 0.6583
Epoch 1/2... Discriminator Loss: 1.1302... Generator Loss: 0.9885
Epoch 1/2... Discriminator Loss: 1.0688... Generator Loss: 1.0235
Epoch 1/2... Discriminator Loss: 1.1088... Generator Loss: 1.0971
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Epoch 1/2... Discriminator Loss: 1.5236... Generator Loss: 0.8699
Epoch 1/2... Discriminator Loss: 1.3209... Generator Loss: 1.2628
Epoch 1/2... Discriminator Loss: 1.6097... Generator Loss: 0.7866
Epoch 1/2... Discriminator Loss: 1.5085... Generator Loss: 0.9675
Epoch 1/2... Discriminator Loss: 1.5018... Generator Loss: 1.1882
Epoch 1/2... Discriminator Loss: 1.4519... Generator Loss: 1.1486
Epoch 1/2... Discriminator Loss: 1.4506... Generator Loss: 0.8184
Epoch 1/2... Discriminator Loss: 1.2662... Generator Loss: 0.9930
Epoch 1/2... Discriminator Loss: 1.2810... Generator Loss: 1.1689
Epoch 1/2... Discriminator Loss: 1.1212... Generator Loss: 1.1514
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Epoch 1/2... Discriminator Loss: 1.1203... Generator Loss: 1.1461
Epoch 1/2... Discriminator Loss: 0.9971... Generator Loss: 1.2427
Epoch 1/2... Discriminator Loss: 1.3505... Generator Loss: 0.6171
Epoch 1/2... Discriminator Loss: 1.1201... Generator Loss: 0.8265
Epoch 1/2... Discriminator Loss: 1.0126... Generator Loss: 1.0949
Epoch 1/2... Discriminator Loss: 1.2031... Generator Loss: 0.8274
Epoch 1/2... Discriminator Loss: 1.2161... Generator Loss: 1.3652
Epoch 1/2... Discriminator Loss: 1.2979... Generator Loss: 0.6913
Epoch 1/2... Discriminator Loss: 1.6614... Generator Loss: 0.3788
Epoch 1/2... Discriminator Loss: 1.2061... Generator Loss: 0.7255
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Epoch 1/2... Discriminator Loss: 1.1147... Generator Loss: 1.1411
Epoch 1/2... Discriminator Loss: 1.3891... Generator Loss: 0.9137
Epoch 1/2... Discriminator Loss: 1.2510... Generator Loss: 0.9624
Epoch 1/2... Discriminator Loss: 1.2959... Generator Loss: 0.9295
Epoch 1/2... Discriminator Loss: 1.3430... Generator Loss: 0.8343
Epoch 1/2... Discriminator Loss: 1.4449... Generator Loss: 1.1724
Epoch 1/2... Discriminator Loss: 1.3031... Generator Loss: 1.3305
Epoch 1/2... Discriminator Loss: 1.4728... Generator Loss: 0.9024
Epoch 1/2... Discriminator Loss: 1.3264... Generator Loss: 1.0550
Epoch 1/2... Discriminator Loss: 1.2588... Generator Loss: 0.9808
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Epoch 1/2... Discriminator Loss: 0.9879... Generator Loss: 1.0026
Epoch 1/2... Discriminator Loss: 1.1450... Generator Loss: 1.0123
Epoch 1/2... Discriminator Loss: 1.1723... Generator Loss: 0.8237
Epoch 1/2... Discriminator Loss: 1.3712... Generator Loss: 0.5685
Epoch 1/2... Discriminator Loss: 1.5059... Generator Loss: 0.4696
Epoch 1/2... Discriminator Loss: 1.0922... Generator Loss: 0.9925
Epoch 1/2... Discriminator Loss: 1.0679... Generator Loss: 0.8177
Epoch 1/2... Discriminator Loss: 1.0492... Generator Loss: 1.0829
Epoch 1/2... Discriminator Loss: 1.2147... Generator Loss: 0.7578
Epoch 1/2... Discriminator Loss: 1.0690... Generator Loss: 1.1531
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Epoch 1/2... Discriminator Loss: 1.3825... Generator Loss: 0.9738
Epoch 1/2... Discriminator Loss: 1.4465... Generator Loss: 0.8594
Epoch 1/2... Discriminator Loss: 1.2685... Generator Loss: 0.8236
Epoch 1/2... Discriminator Loss: 1.3448... Generator Loss: 1.2464
Epoch 1/2... Discriminator Loss: 1.5578... Generator Loss: 0.8571
Epoch 1/2... Discriminator Loss: 1.2654... Generator Loss: 0.9412
Epoch 1/2... Discriminator Loss: 1.4626... Generator Loss: 1.0775
Epoch 1/2... Discriminator Loss: 1.4591... Generator Loss: 0.8770
Epoch 1/2... Discriminator Loss: 1.2760... Generator Loss: 0.8109
Epoch 1/2... Discriminator Loss: 1.2445... Generator Loss: 1.0000
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Epoch 1/2... Discriminator Loss: 1.0654... Generator Loss: 1.0819
Epoch 1/2... Discriminator Loss: 1.6216... Generator Loss: 0.4058
Epoch 1/2... Discriminator Loss: 1.7787... Generator Loss: 0.3525
Epoch 1/2... Discriminator Loss: 1.1646... Generator Loss: 0.7360
Epoch 1/2... Discriminator Loss: 1.0074... Generator Loss: 0.9088
Epoch 1/2... Discriminator Loss: 1.2622... Generator Loss: 0.6206
Epoch 1/2... Discriminator Loss: 1.5593... Generator Loss: 2.1357
Epoch 1/2... Discriminator Loss: 1.2281... Generator Loss: 0.8493
Epoch 1/2... Discriminator Loss: 1.0124... Generator Loss: 1.0275
Epoch 1/2... Discriminator Loss: 1.2560... Generator Loss: 0.7167
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Epoch 1/2... Discriminator Loss: 1.1375... Generator Loss: 1.0502
Epoch 1/2... Discriminator Loss: 1.1917... Generator Loss: 0.9803
Epoch 1/2... Discriminator Loss: 1.2736... Generator Loss: 1.1104
Epoch 1/2... Discriminator Loss: 1.1124... Generator Loss: 1.5779
Epoch 1/2... Discriminator Loss: 1.1181... Generator Loss: 1.0223
Epoch 1/2... Discriminator Loss: 1.3656... Generator Loss: 1.1788
Epoch 1/2... Discriminator Loss: 1.3848... Generator Loss: 1.1047
Epoch 1/2... Discriminator Loss: 1.0915... Generator Loss: 1.1454
Epoch 1/2... Discriminator Loss: 1.2573... Generator Loss: 1.2982
Epoch 1/2... Discriminator Loss: 1.0668... Generator Loss: 1.3149
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Epoch 1/2... Discriminator Loss: 1.1252... Generator Loss: 1.6021
Epoch 1/2... Discriminator Loss: 1.0539... Generator Loss: 1.0062
Epoch 1/2... Discriminator Loss: 1.1105... Generator Loss: 0.8041
Epoch 1/2... Discriminator Loss: 1.0280... Generator Loss: 1.2180
Epoch 1/2... Discriminator Loss: 1.5424... Generator Loss: 0.4659
Epoch 1/2... Discriminator Loss: 1.0899... Generator Loss: 1.4334
Epoch 1/2... Discriminator Loss: 1.1041... Generator Loss: 0.9542
Epoch 1/2... Discriminator Loss: 2.4448... Generator Loss: 4.0868
Epoch 1/2... Discriminator Loss: 1.2210... Generator Loss: 0.6818
Epoch 1/2... Discriminator Loss: 1.0831... Generator Loss: 0.8674
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Epoch 1/2... Discriminator Loss: 1.1820... Generator Loss: 1.2209
Epoch 1/2... Discriminator Loss: 1.1457... Generator Loss: 0.9478
Epoch 1/2... Discriminator Loss: 1.2502... Generator Loss: 1.3384
Epoch 1/2... Discriminator Loss: 1.1716... Generator Loss: 1.6363
Epoch 1/2... Discriminator Loss: 0.9995... Generator Loss: 0.9807
Epoch 1/2... Discriminator Loss: 1.2063... Generator Loss: 1.0247
Epoch 1/2... Discriminator Loss: 1.0371... Generator Loss: 1.0859
Epoch 1/2... Discriminator Loss: 1.1630... Generator Loss: 1.4161
Epoch 1/2... Discriminator Loss: 1.1425... Generator Loss: 1.1799
Epoch 1/2... Discriminator Loss: 1.2670... Generator Loss: 1.4787
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Epoch 1/2... Discriminator Loss: 0.9893... Generator Loss: 0.9338
Epoch 1/2... Discriminator Loss: 0.9395... Generator Loss: 1.1330
Epoch 1/2... Discriminator Loss: 1.1077... Generator Loss: 0.7825
Epoch 1/2... Discriminator Loss: 0.8814... Generator Loss: 1.2369
Epoch 1/2... Discriminator Loss: 0.9170... Generator Loss: 1.1126
Epoch 1/2... Discriminator Loss: 1.4611... Generator Loss: 0.4682
Epoch 1/2... Discriminator Loss: 0.7922... Generator Loss: 1.3351
Epoch 1/2... Discriminator Loss: 0.8693... Generator Loss: 1.1122
Epoch 1/2... Discriminator Loss: 1.0356... Generator Loss: 0.8399
Epoch 1/2... Discriminator Loss: 1.3126... Generator Loss: 2.7920
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Epoch 1/2... Discriminator Loss: 1.3122... Generator Loss: 1.1548
Epoch 1/2... Discriminator Loss: 1.3019... Generator Loss: 1.0062
Epoch 1/2... Discriminator Loss: 1.3012... Generator Loss: 1.0357
Epoch 1/2... Discriminator Loss: 1.1486... Generator Loss: 0.8299
Epoch 1/2... Discriminator Loss: 1.3958... Generator Loss: 0.9451
Epoch 1/2... Discriminator Loss: 1.1596... Generator Loss: 1.5186
Epoch 1/2... Discriminator Loss: 1.1698... Generator Loss: 1.3565
Epoch 1/2... Discriminator Loss: 1.0952... Generator Loss: 1.1116
Epoch 1/2... Discriminator Loss: 1.1715... Generator Loss: 0.9766
Epoch 1/2... Discriminator Loss: 1.2639... Generator Loss: 1.0319
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Epoch 1/2... Discriminator Loss: 1.3581... Generator Loss: 0.5408
Epoch 1/2... Discriminator Loss: 0.9949... Generator Loss: 0.8647
Epoch 1/2... Discriminator Loss: 0.6406... Generator Loss: 1.7403
Epoch 1/2... Discriminator Loss: 0.8643... Generator Loss: 1.2095
Epoch 1/2... Discriminator Loss: 1.2111... Generator Loss: 0.6499
Epoch 1/2... Discriminator Loss: 1.5959... Generator Loss: 0.4442
Epoch 1/2... Discriminator Loss: 1.0150... Generator Loss: 0.9251
Epoch 1/2... Discriminator Loss: 1.0388... Generator Loss: 0.9425
Epoch 1/2... Discriminator Loss: 0.8628... Generator Loss: 1.2142
Epoch 1/2... Discriminator Loss: 1.1322... Generator Loss: 0.7580
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Epoch 1/2... Discriminator Loss: 0.9187... Generator Loss: 0.8240
Epoch 1/2... Discriminator Loss: 1.1652... Generator Loss: 1.0173
Epoch 1/2... Discriminator Loss: 1.1643... Generator Loss: 0.9880
Epoch 1/2... Discriminator Loss: 1.2603... Generator Loss: 0.9727
Epoch 1/2... Discriminator Loss: 1.3144... Generator Loss: 1.0467
Epoch 1/2... Discriminator Loss: 1.1213... Generator Loss: 1.2187
Epoch 1/2... Discriminator Loss: 1.0567... Generator Loss: 1.4140
Epoch 1/2... Discriminator Loss: 0.9909... Generator Loss: 1.0430
Epoch 1/2... Discriminator Loss: 1.1228... Generator Loss: 1.1447
Epoch 1/2... Discriminator Loss: 0.8388... Generator Loss: 1.3164
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Epoch 1/2... Discriminator Loss: 1.1010... Generator Loss: 0.7608
Epoch 1/2... Discriminator Loss: 1.1146... Generator Loss: 0.7421
Epoch 1/2... Discriminator Loss: 1.6299... Generator Loss: 0.4944
Epoch 1/2... Discriminator Loss: 1.3917... Generator Loss: 0.5805
Epoch 1/2... Discriminator Loss: 0.9110... Generator Loss: 1.4253
Epoch 1/2... Discriminator Loss: 0.8982... Generator Loss: 1.2765
Epoch 1/2... Discriminator Loss: 0.7147... Generator Loss: 1.8362
Epoch 1/2... Discriminator Loss: 1.1531... Generator Loss: 0.7580
Epoch 1/2... Discriminator Loss: 0.8902... Generator Loss: 1.7381
Epoch 1/2... Discriminator Loss: 0.9090... Generator Loss: 1.0433
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Epoch 1/2... Discriminator Loss: 1.5199... Generator Loss: 0.7603
Epoch 1/2... Discriminator Loss: 1.2364... Generator Loss: 1.0221
Epoch 1/2... Discriminator Loss: 0.9302... Generator Loss: 1.2553
Epoch 1/2... Discriminator Loss: 1.0680... Generator Loss: 0.8973
Epoch 1/2... Discriminator Loss: 1.1039... Generator Loss: 1.1634
Epoch 1/2... Discriminator Loss: 0.9513... Generator Loss: 1.5209
Epoch 1/2... Discriminator Loss: 0.7540... Generator Loss: 1.4550
Epoch 1/2... Discriminator Loss: 1.2058... Generator Loss: 1.1845
Epoch 1/2... Discriminator Loss: 1.1442... Generator Loss: 1.3764
Epoch 1/2... Discriminator Loss: 1.3144... Generator Loss: 1.3955
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Epoch 1/2... Discriminator Loss: 0.8510... Generator Loss: 1.2442
Epoch 1/2... Discriminator Loss: 1.3295... Generator Loss: 2.4458
Epoch 1/2... Discriminator Loss: 1.1658... Generator Loss: 0.7315
Epoch 1/2... Discriminator Loss: 0.7568... Generator Loss: 1.5136
Epoch 1/2... Discriminator Loss: 1.4264... Generator Loss: 0.4816
Epoch 1/2... Discriminator Loss: 0.8646... Generator Loss: 1.3905
Epoch 1/2... Discriminator Loss: 1.0346... Generator Loss: 0.8872
Epoch 1/2... Discriminator Loss: 0.7529... Generator Loss: 1.5931
Epoch 1/2... Discriminator Loss: 0.7639... Generator Loss: 1.2640
Epoch 1/2... Discriminator Loss: 1.3554... Generator Loss: 0.5729
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Epoch 1/2... Discriminator Loss: 0.9456... Generator Loss: 1.4207
Epoch 1/2... Discriminator Loss: 1.3837... Generator Loss: 0.9841
Epoch 1/2... Discriminator Loss: 1.2945... Generator Loss: 1.1045
Epoch 1/2... Discriminator Loss: 1.2654... Generator Loss: 1.1546
Epoch 1/2... Discriminator Loss: 1.2489... Generator Loss: 1.1268
Epoch 1/2... Discriminator Loss: 0.9603... Generator Loss: 1.2822
Epoch 1/2... Discriminator Loss: 1.5437... Generator Loss: 1.1146
Epoch 1/2... Discriminator Loss: 1.2400... Generator Loss: 1.1238
Epoch 1/2... Discriminator Loss: 0.9036... Generator Loss: 1.2381
Epoch 1/2... Discriminator Loss: 1.1739... Generator Loss: 1.0921
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Epoch 1/2... Discriminator Loss: 1.0040... Generator Loss: 1.3467
Epoch 1/2... Discriminator Loss: 0.7653... Generator Loss: 1.4331
Epoch 1/2... Discriminator Loss: 1.2757... Generator Loss: 2.6682
Epoch 1/2... Discriminator Loss: 1.3936... Generator Loss: 0.5071
Epoch 1/2... Discriminator Loss: 0.9851... Generator Loss: 1.1297
Epoch 1/2... Discriminator Loss: 0.6707... Generator Loss: 1.5204
Epoch 1/2... Discriminator Loss: 0.9819... Generator Loss: 1.0366
Epoch 1/2... Discriminator Loss: 0.9365... Generator Loss: 2.0710
Epoch 1/2... Discriminator Loss: 1.2657... Generator Loss: 0.6642
Epoch 1/2... Discriminator Loss: 1.3464... Generator Loss: 0.5819
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Epoch 1/2... Discriminator Loss: 0.9688... Generator Loss: 1.5233
Epoch 1/2... Discriminator Loss: 1.1812... Generator Loss: 1.0487
Epoch 1/2... Discriminator Loss: 1.2799... Generator Loss: 1.2053
Epoch 1/2... Discriminator Loss: 1.2141... Generator Loss: 1.1937
Epoch 1/2... Discriminator Loss: 1.0121... Generator Loss: 1.2847
Epoch 1/2... Discriminator Loss: 1.3286... Generator Loss: 1.1071
Epoch 1/2... Discriminator Loss: 1.0355... Generator Loss: 1.3207
Epoch 1/2... Discriminator Loss: 0.9731... Generator Loss: 1.2766
Epoch 1/2... Discriminator Loss: 0.8018... Generator Loss: 0.9464
Epoch 1/2... Discriminator Loss: 1.1664... Generator Loss: 0.9630
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Epoch 1/2... Discriminator Loss: 1.0926... Generator Loss: 0.7630
Epoch 1/2... Discriminator Loss: 1.5818... Generator Loss: 0.4847
Epoch 1/2... Discriminator Loss: 0.9490... Generator Loss: 0.9475
Epoch 1/2... Discriminator Loss: 1.2371... Generator Loss: 0.7937
Epoch 1/2... Discriminator Loss: 0.9198... Generator Loss: 1.0504
Epoch 1/2... Discriminator Loss: 0.8768... Generator Loss: 1.0505
Epoch 1/2... Discriminator Loss: 0.8306... Generator Loss: 1.3210
Epoch 1/2... Discriminator Loss: 0.8398... Generator Loss: 1.7772
Epoch 1/2... Discriminator Loss: 1.3351... Generator Loss: 2.1456
Epoch 1/2... Discriminator Loss: 1.2657... Generator Loss: 0.6683
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Epoch 1/2... Discriminator Loss: 0.9336... Generator Loss: 1.1452
Epoch 1/2... Discriminator Loss: 0.8811... Generator Loss: 0.9070
Epoch 1/2... Discriminator Loss: 1.1347... Generator Loss: 1.1612
Epoch 1/2... Discriminator Loss: 1.3018... Generator Loss: 1.4922
Epoch 1/2... Discriminator Loss: 1.2819... Generator Loss: 0.7626
Epoch 1/2... Discriminator Loss: 0.9989... Generator Loss: 1.6526
Epoch 1/2... Discriminator Loss: 1.1490... Generator Loss: 1.2831
Epoch 1/2... Discriminator Loss: 1.4401... Generator Loss: 1.1071
Epoch 1/2... Discriminator Loss: 1.2490... Generator Loss: 0.9198
Epoch 1/2... Discriminator Loss: 1.3016... Generator Loss: 1.0527
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Epoch 1/2... Discriminator Loss: 1.1544... Generator Loss: 0.6917
Epoch 1/2... Discriminator Loss: 0.8453... Generator Loss: 1.2142
Epoch 1/2... Discriminator Loss: 1.0714... Generator Loss: 1.5667
Epoch 1/2... Discriminator Loss: 0.7549... Generator Loss: 1.3083
Epoch 1/2... Discriminator Loss: 0.7412... Generator Loss: 1.4427
Epoch 1/2... Discriminator Loss: 0.6159... Generator Loss: 1.6744
Epoch 1/2... Discriminator Loss: 0.6879... Generator Loss: 1.4590
Epoch 2/2... Discriminator Loss: 1.2506... Generator Loss: 0.6695
Epoch 2/2... Discriminator Loss: 0.9854... Generator Loss: 1.1340
Epoch 2/2... Discriminator Loss: 1.0407... Generator Loss: 0.8021
Epoch 2/2... Discriminator Loss: 0.9449... Generator Loss: 1.3442
Epoch 2/2... Discriminator Loss: 0.7547... Generator Loss: 1.9890
Epoch 2/2... Discriminator Loss: 1.5028... Generator Loss: 0.4903
Epoch 2/2... Discriminator Loss: 1.3050... Generator Loss: 0.6011
Epoch 2/2... Discriminator Loss: 0.8730... Generator Loss: 1.0729
Epoch 2/2... Discriminator Loss: 0.6160... Generator Loss: 1.9913
Epoch 2/2... Discriminator Loss: 2.1592... Generator Loss: 0.2264
=======
Epoch 1/2... Discriminator Loss: 1.2985... Generator Loss: 0.9210
Epoch 1/2... Discriminator Loss: 0.9716... Generator Loss: 1.5379
Epoch 1/2... Discriminator Loss: 1.1606... Generator Loss: 1.0527
Epoch 1/2... Discriminator Loss: 1.3678... Generator Loss: 1.2110
Epoch 1/2... Discriminator Loss: 1.5174... Generator Loss: 0.8291
Epoch 1/2... Discriminator Loss: 1.2541... Generator Loss: 0.7944
Epoch 1/2... Discriminator Loss: 1.2825... Generator Loss: 0.9413
Epoch 2/2... Discriminator Loss: 1.2304... Generator Loss: 1.1519
Epoch 2/2... Discriminator Loss: 1.2757... Generator Loss: 1.2819
Epoch 2/2... Discriminator Loss: 1.4276... Generator Loss: 0.9059
Epoch 2/2... Discriminator Loss: 1.2855... Generator Loss: 0.8893
Epoch 2/2... Discriminator Loss: 0.9508... Generator Loss: 1.2052
Epoch 2/2... Discriminator Loss: 1.2807... Generator Loss: 1.0833
Epoch 2/2... Discriminator Loss: 1.2670... Generator Loss: 0.8778
Epoch 2/2... Discriminator Loss: 1.3012... Generator Loss: 0.6877
Epoch 2/2... Discriminator Loss: 1.3408... Generator Loss: 1.2525
Epoch 2/2... Discriminator Loss: 1.5175... Generator Loss: 1.4469
>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250
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Epoch 2/2... Discriminator Loss: 2.2421... Generator Loss: 0.2518
Epoch 2/2... Discriminator Loss: 0.9195... Generator Loss: 1.0048
Epoch 2/2... Discriminator Loss: 0.9956... Generator Loss: 2.8121
Epoch 2/2... Discriminator Loss: 1.2211... Generator Loss: 0.6841
Epoch 2/2... Discriminator Loss: 2.1509... Generator Loss: 0.2375
Epoch 2/2... Discriminator Loss: 0.7690... Generator Loss: 1.2926
Epoch 2/2... Discriminator Loss: 0.6392... Generator Loss: 1.6988
Epoch 2/2... Discriminator Loss: 0.8089... Generator Loss: 1.1893
Epoch 2/2... Discriminator Loss: 0.5535... Generator Loss: 2.3287
Epoch 2/2... Discriminator Loss: 0.7209... Generator Loss: 1.3927
=======
Epoch 2/2... Discriminator Loss: 1.1570... Generator Loss: 1.2205
Epoch 2/2... Discriminator Loss: 0.9824... Generator Loss: 1.2753
Epoch 2/2... Discriminator Loss: 1.2923... Generator Loss: 1.0791
Epoch 2/2... Discriminator Loss: 1.2933... Generator Loss: 1.3515
Epoch 2/2... Discriminator Loss: 1.5631... Generator Loss: 1.1526
Epoch 2/2... Discriminator Loss: 1.1994... Generator Loss: 0.8545
Epoch 2/2... Discriminator Loss: 1.1495... Generator Loss: 1.1956
Epoch 2/2... Discriminator Loss: 1.1799... Generator Loss: 0.9257
Epoch 2/2... Discriminator Loss: 1.3218... Generator Loss: 1.0666
Epoch 2/2... Discriminator Loss: 1.2249... Generator Loss: 1.0785
>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250
<<<<<<< HEAD =======
>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250
<<<<<<< HEAD
Epoch 2/2... Discriminator Loss: 0.5572... Generator Loss: 1.9994
Epoch 2/2... Discriminator Loss: 1.7671... Generator Loss: 0.4180
Epoch 2/2... Discriminator Loss: 1.1754... Generator Loss: 0.6663
Epoch 2/2... Discriminator Loss: 0.9099... Generator Loss: 0.9460
Epoch 2/2... Discriminator Loss: 1.4151... Generator Loss: 0.5052
Epoch 2/2... Discriminator Loss: 0.8110... Generator Loss: 1.1670
Epoch 2/2... Discriminator Loss: 1.0110... Generator Loss: 0.8688
Epoch 2/2... Discriminator Loss: 0.5493... Generator Loss: 1.9779
Epoch 2/2... Discriminator Loss: 0.7139... Generator Loss: 2.0452
Epoch 2/2... Discriminator Loss: 0.8678... Generator Loss: 1.1741
=======
Epoch 2/2... Discriminator Loss: 1.1764... Generator Loss: 0.9101
Epoch 2/2... Discriminator Loss: 1.5106... Generator Loss: 1.1083
Epoch 2/2... Discriminator Loss: 1.3344... Generator Loss: 1.1112
Epoch 2/2... Discriminator Loss: 1.0827... Generator Loss: 0.9679
Epoch 2/2... Discriminator Loss: 1.4100... Generator Loss: 0.7444
Epoch 2/2... Discriminator Loss: 1.1199... Generator Loss: 1.0342
Epoch 2/2... Discriminator Loss: 1.2367... Generator Loss: 0.7882
Epoch 2/2... Discriminator Loss: 1.0909... Generator Loss: 1.1590
Epoch 2/2... Discriminator Loss: 1.3605... Generator Loss: 1.0652
Epoch 2/2... Discriminator Loss: 1.4411... Generator Loss: 0.9355
>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250
Epoch 2/2... Discriminator Loss: 0.5695... Generator Loss: 1.8691
Epoch 2/2... Discriminator Loss: 0.7072... Generator Loss: 1.4202
Epoch 2/2... Discriminator Loss: 0.6027... Generator Loss: 1.7367
Epoch 2/2... Discriminator Loss: 0.8251... Generator Loss: 1.5698
Epoch 2/2... Discriminator Loss: 0.8123... Generator Loss: 2.5586
Epoch 2/2... Discriminator Loss: 1.4421... Generator Loss: 0.4879
Epoch 2/2... Discriminator Loss: 0.9566... Generator Loss: 0.9479
Epoch 2/2... Discriminator Loss: 1.9877... Generator Loss: 0.3102
Epoch 2/2... Discriminator Loss: 0.8686... Generator Loss: 1.1072
Epoch 2/2... Discriminator Loss: 0.7917... Generator Loss: 3.0560
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Epoch 2/2... Discriminator Loss: 1.2348... Generator Loss: 1.0040
Epoch 2/2... Discriminator Loss: 1.5943... Generator Loss: 0.9438
Epoch 2/2... Discriminator Loss: 1.2947... Generator Loss: 0.8390
Epoch 2/2... Discriminator Loss: 1.1607... Generator Loss: 0.6983
Epoch 2/2... Discriminator Loss: 1.1700... Generator Loss: 1.1529
Epoch 2/2... Discriminator Loss: 1.4600... Generator Loss: 0.8271
Epoch 2/2... Discriminator Loss: 1.1879... Generator Loss: 0.8651
Epoch 2/2... Discriminator Loss: 1.5672... Generator Loss: 0.8356
Epoch 2/2... Discriminator Loss: 1.3009... Generator Loss: 0.9654
Epoch 2/2... Discriminator Loss: 1.2427... Generator Loss: 1.4940
>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250
<<<<<<< HEAD
Epoch 2/2... Discriminator Loss: 0.8486... Generator Loss: 1.8827
Epoch 2/2... Discriminator Loss: 0.9318... Generator Loss: 0.9933
Epoch 2/2... Discriminator Loss: 0.8532... Generator Loss: 1.2440
Epoch 2/2... Discriminator Loss: 0.7408... Generator Loss: 1.5523
Epoch 2/2... Discriminator Loss: 1.2648... Generator Loss: 0.6938
Epoch 2/2... Discriminator Loss: 1.1256... Generator Loss: 0.7785
Epoch 2/2... Discriminator Loss: 0.6980... Generator Loss: 2.1164
Epoch 2/2... Discriminator Loss: 0.7444... Generator Loss: 1.4081
Epoch 2/2... Discriminator Loss: 0.6499... Generator Loss: 1.6234
Epoch 2/2... Discriminator Loss: 0.7927... Generator Loss: 1.7167
======= >>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250
<<<<<<< HEAD
Epoch 2/2... Discriminator Loss: 1.1612... Generator Loss: 0.7068
Epoch 2/2... Discriminator Loss: 1.5218... Generator Loss: 0.4790
Epoch 2/2... Discriminator Loss: 0.6321... Generator Loss: 1.6279
Epoch 2/2... Discriminator Loss: 2.0099... Generator Loss: 0.2855
Epoch 2/2... Discriminator Loss: 0.7869... Generator Loss: 1.3201
Epoch 2/2... Discriminator Loss: 1.0552... Generator Loss: 0.8960
Epoch 2/2... Discriminator Loss: 0.9168... Generator Loss: 0.9604
Epoch 2/2... Discriminator Loss: 0.5649... Generator Loss: 2.7090
Epoch 2/2... Discriminator Loss: 0.6913... Generator Loss: 1.4578
Epoch 2/2... Discriminator Loss: 0.8485... Generator Loss: 1.1569
=======
Epoch 2/2... Discriminator Loss: 1.3025... Generator Loss: 0.9115
Epoch 2/2... Discriminator Loss: 1.4321... Generator Loss: 1.0794
Epoch 2/2... Discriminator Loss: 1.1816... Generator Loss: 1.1193
Epoch 2/2... Discriminator Loss: 1.0517... Generator Loss: 1.0854
Epoch 2/2... Discriminator Loss: 1.1517... Generator Loss: 0.8860
Epoch 2/2... Discriminator Loss: 1.2427... Generator Loss: 1.1789
Epoch 2/2... Discriminator Loss: 1.1058... Generator Loss: 1.0791
Epoch 2/2... Discriminator Loss: 1.3626... Generator Loss: 1.0793
Epoch 2/2... Discriminator Loss: 1.2568... Generator Loss: 0.9867
Epoch 2/2... Discriminator Loss: 1.4467... Generator Loss: 0.6939
>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250
<<<<<<< HEAD
Epoch 2/2... Discriminator Loss: 0.9415... Generator Loss: 0.9636
Epoch 2/2... Discriminator Loss: 2.0380... Generator Loss: 0.3191
Epoch 2/2... Discriminator Loss: 0.7185... Generator Loss: 1.3629
Epoch 2/2... Discriminator Loss: 0.6519... Generator Loss: 1.5544
Epoch 2/2... Discriminator Loss: 0.7944... Generator Loss: 1.9935
Epoch 2/2... Discriminator Loss: 0.5865... Generator Loss: 1.9165
Epoch 2/2... Discriminator Loss: 1.0819... Generator Loss: 0.8289
Epoch 2/2... Discriminator Loss: 1.8696... Generator Loss: 0.3565
Epoch 2/2... Discriminator Loss: 1.0981... Generator Loss: 0.7255
Epoch 2/2... Discriminator Loss: 0.9470... Generator Loss: 0.9221
=======
Epoch 2/2... Discriminator Loss: 1.3536... Generator Loss: 0.8538
Epoch 2/2... Discriminator Loss: 1.4411... Generator Loss: 1.0618
Epoch 2/2... Discriminator Loss: 1.4806... Generator Loss: 1.1037
Epoch 2/2... Discriminator Loss: 0.9384... Generator Loss: 1.0109
Epoch 2/2... Discriminator Loss: 1.2625... Generator Loss: 0.7165
Epoch 2/2... Discriminator Loss: 1.1978... Generator Loss: 1.2126
Epoch 2/2... Discriminator Loss: 1.1419... Generator Loss: 0.8937
Epoch 2/2... Discriminator Loss: 1.3204... Generator Loss: 0.9965
Epoch 2/2... Discriminator Loss: 1.2223... Generator Loss: 0.9401
Epoch 2/2... Discriminator Loss: 1.3010... Generator Loss: 1.0331
>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250
<<<<<<< HEAD
Epoch 2/2... Discriminator Loss: 1.3790... Generator Loss: 0.5444
Epoch 2/2... Discriminator Loss: 0.8704... Generator Loss: 1.1721
Epoch 2/2... Discriminator Loss: 0.7911... Generator Loss: 1.1785
Epoch 2/2... Discriminator Loss: 0.9644... Generator Loss: 0.9676
Epoch 2/2... Discriminator Loss: 0.6646... Generator Loss: 1.4785
Epoch 2/2... Discriminator Loss: 1.1157... Generator Loss: 0.8424
Epoch 2/2... Discriminator Loss: 0.7191... Generator Loss: 1.3387
Epoch 2/2... Discriminator Loss: 0.8084... Generator Loss: 1.1819
Epoch 2/2... Discriminator Loss: 0.6006... Generator Loss: 1.9223
Epoch 2/2... Discriminator Loss: 1.5378... Generator Loss: 0.4661
=======
Epoch 2/2... Discriminator Loss: 1.1894... Generator Loss: 0.9454
Epoch 2/2... Discriminator Loss: 1.2353... Generator Loss: 0.7210
Epoch 2/2... Discriminator Loss: 1.0401... Generator Loss: 0.9401
Epoch 2/2... Discriminator Loss: 0.9934... Generator Loss: 1.0112
Epoch 2/2... Discriminator Loss: 0.9820... Generator Loss: 0.9312
Epoch 2/2... Discriminator Loss: 0.9395... Generator Loss: 1.1004
Epoch 2/2... Discriminator Loss: 1.3912... Generator Loss: 0.7586
Epoch 2/2... Discriminator Loss: 1.1767... Generator Loss: 0.8670
Epoch 2/2... Discriminator Loss: 1.2854... Generator Loss: 1.0912
Epoch 2/2... Discriminator Loss: 1.2598... Generator Loss: 0.7456
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<<<<<<< HEAD
Epoch 2/2... Discriminator Loss: 1.1596... Generator Loss: 0.7529
Epoch 2/2... Discriminator Loss: 0.6031... Generator Loss: 1.7092
Epoch 2/2... Discriminator Loss: 0.8105... Generator Loss: 1.1805
Epoch 2/2... Discriminator Loss: 1.1304... Generator Loss: 0.7576
Epoch 2/2... Discriminator Loss: 0.9056... Generator Loss: 0.9891
Epoch 2/2... Discriminator Loss: 0.6595... Generator Loss: 1.7970
Epoch 2/2... Discriminator Loss: 2.0092... Generator Loss: 0.2814
Epoch 2/2... Discriminator Loss: 1.6497... Generator Loss: 0.4490
Epoch 2/2... Discriminator Loss: 2.4006... Generator Loss: 0.2289
Epoch 2/2... Discriminator Loss: 1.0379... Generator Loss: 0.8531
=======
Epoch 2/2... Discriminator Loss: 1.2185... Generator Loss: 0.8031
Epoch 2/2... Discriminator Loss: 0.9399... Generator Loss: 1.0419
Epoch 2/2... Discriminator Loss: 1.5073... Generator Loss: 1.3296
Epoch 2/2... Discriminator Loss: 1.0065... Generator Loss: 0.9707
Epoch 2/2... Discriminator Loss: 1.3954... Generator Loss: 0.7446
Epoch 2/2... Discriminator Loss: 1.0972... Generator Loss: 1.2556
Epoch 2/2... Discriminator Loss: 1.3409... Generator Loss: 1.1779
Epoch 2/2... Discriminator Loss: 1.4481... Generator Loss: 0.8671
Epoch 2/2... Discriminator Loss: 1.3275... Generator Loss: 1.3056
Epoch 2/2... Discriminator Loss: 1.3849... Generator Loss: 1.2182
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Epoch 2/2... Discriminator Loss: 1.8805... Generator Loss: 0.3391
Epoch 2/2... Discriminator Loss: 1.6630... Generator Loss: 0.4206
Epoch 2/2... Discriminator Loss: 0.9710... Generator Loss: 0.8844
Epoch 2/2... Discriminator Loss: 0.6724... Generator Loss: 1.5895
Epoch 2/2... Discriminator Loss: 0.8180... Generator Loss: 1.1705
Epoch 2/2... Discriminator Loss: 1.4110... Generator Loss: 0.5791
Epoch 2/2... Discriminator Loss: 0.7520... Generator Loss: 1.3250
Epoch 2/2... Discriminator Loss: 0.7420... Generator Loss: 1.3631
Epoch 2/2... Discriminator Loss: 0.8318... Generator Loss: 1.2313
Epoch 2/2... Discriminator Loss: 0.6874... Generator Loss: 1.4311
=======
Epoch 2/2... Discriminator Loss: 1.3971... Generator Loss: 0.9371
Epoch 2/2... Discriminator Loss: 1.0846... Generator Loss: 1.0737
Epoch 2/2... Discriminator Loss: 1.5056... Generator Loss: 0.9013
Epoch 2/2... Discriminator Loss: 1.2632... Generator Loss: 1.1743
Epoch 2/2... Discriminator Loss: 1.0126... Generator Loss: 0.9236
Epoch 2/2... Discriminator Loss: 1.2637... Generator Loss: 1.0817
Epoch 2/2... Discriminator Loss: 1.2574... Generator Loss: 1.0099
Epoch 2/2... Discriminator Loss: 1.5029... Generator Loss: 0.7555
Epoch 2/2... Discriminator Loss: 1.3499... Generator Loss: 1.0408
Epoch 2/2... Discriminator Loss: 1.3704... Generator Loss: 0.8308
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Epoch 2/2... Discriminator Loss: 0.8620... Generator Loss: 1.2214
Epoch 2/2... Discriminator Loss: 0.8242... Generator Loss: 1.1255
Epoch 2/2... Discriminator Loss: 0.9049... Generator Loss: 1.1335
Epoch 2/2... Discriminator Loss: 0.5577... Generator Loss: 1.9259
Epoch 2/2... Discriminator Loss: 0.5700... Generator Loss: 2.1927
Epoch 2/2... Discriminator Loss: 1.4731... Generator Loss: 0.4813
Epoch 2/2... Discriminator Loss: 0.5982... Generator Loss: 1.8513
Epoch 2/2... Discriminator Loss: 0.7152... Generator Loss: 1.3503
Epoch 2/2... Discriminator Loss: 0.5265... Generator Loss: 2.1101
Epoch 2/2... Discriminator Loss: 1.0314... Generator Loss: 0.8227
=======
Epoch 2/2... Discriminator Loss: 1.3681... Generator Loss: 0.8933
Epoch 2/2... Discriminator Loss: 1.3211... Generator Loss: 1.0775
Epoch 2/2... Discriminator Loss: 1.3071... Generator Loss: 1.1913
Epoch 2/2... Discriminator Loss: 1.1825... Generator Loss: 1.0251
Epoch 2/2... Discriminator Loss: 1.3300... Generator Loss: 0.9892
Epoch 2/2... Discriminator Loss: 1.4993... Generator Loss: 0.6497
Epoch 2/2... Discriminator Loss: 1.2227... Generator Loss: 1.0787
Epoch 2/2... Discriminator Loss: 1.1884... Generator Loss: 0.7458
Epoch 2/2... Discriminator Loss: 1.1497... Generator Loss: 0.8547
Epoch 2/2... Discriminator Loss: 1.2184... Generator Loss: 0.6711
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<<<<<<< HEAD
Epoch 2/2... Discriminator Loss: 0.9461... Generator Loss: 0.9871
Epoch 2/2... Discriminator Loss: 0.8831... Generator Loss: 1.0252
Epoch 2/2... Discriminator Loss: 0.6654... Generator Loss: 1.5856
Epoch 2/2... Discriminator Loss: 1.0940... Generator Loss: 0.7549
Epoch 2/2... Discriminator Loss: 0.7341... Generator Loss: 1.2603
Epoch 2/2... Discriminator Loss: 0.7675... Generator Loss: 1.1906
Epoch 2/2... Discriminator Loss: 0.6094... Generator Loss: 1.6558
Epoch 2/2... Discriminator Loss: 2.7157... Generator Loss: 0.2034
Epoch 2/2... Discriminator Loss: 0.7423... Generator Loss: 1.2790
Epoch 2/2... Discriminator Loss: 0.9672... Generator Loss: 0.8621
=======
Epoch 2/2... Discriminator Loss: 1.0866... Generator Loss: 1.1794
Epoch 2/2... Discriminator Loss: 1.2288... Generator Loss: 0.8443
Epoch 2/2... Discriminator Loss: 1.2709... Generator Loss: 0.7449
Epoch 2/2... Discriminator Loss: 1.0260... Generator Loss: 0.9022
Epoch 2/2... Discriminator Loss: 1.0035... Generator Loss: 1.4307
Epoch 2/2... Discriminator Loss: 1.1884... Generator Loss: 1.2823
Epoch 2/2... Discriminator Loss: 1.3402... Generator Loss: 1.0261
Epoch 2/2... Discriminator Loss: 1.0404... Generator Loss: 1.1873
Epoch 2/2... Discriminator Loss: 1.2045... Generator Loss: 1.0616
Epoch 2/2... Discriminator Loss: 1.1584... Generator Loss: 1.0506
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<<<<<<< HEAD
Epoch 2/2... Discriminator Loss: 2.3372... Generator Loss: 0.2307
Epoch 2/2... Discriminator Loss: 0.7074... Generator Loss: 1.5064
Epoch 2/2... Discriminator Loss: 0.6653... Generator Loss: 1.6534
Epoch 2/2... Discriminator Loss: 0.8968... Generator Loss: 1.0031
Epoch 2/2... Discriminator Loss: 1.2479... Generator Loss: 0.6375
Epoch 2/2... Discriminator Loss: 2.9328... Generator Loss: 0.1232
Epoch 2/2... Discriminator Loss: 0.7250... Generator Loss: 1.3122
Epoch 2/2... Discriminator Loss: 0.9024... Generator Loss: 0.9943
Epoch 2/2... Discriminator Loss: 1.7280... Generator Loss: 0.4301
Epoch 2/2... Discriminator Loss: 0.7890... Generator Loss: 1.3168
=======
Epoch 2/2... Discriminator Loss: 1.4605... Generator Loss: 0.6346
Epoch 2/2... Discriminator Loss: 1.3985... Generator Loss: 1.1689
Epoch 2/2... Discriminator Loss: 1.0003... Generator Loss: 1.1342
Epoch 2/2... Discriminator Loss: 1.2589... Generator Loss: 1.0832
Epoch 2/2... Discriminator Loss: 1.2091... Generator Loss: 0.8775
Epoch 2/2... Discriminator Loss: 1.4191... Generator Loss: 0.7751
Epoch 2/2... Discriminator Loss: 1.3338... Generator Loss: 0.9349
Epoch 2/2... Discriminator Loss: 1.3123... Generator Loss: 0.8006
Epoch 2/2... Discriminator Loss: 1.1892... Generator Loss: 1.0753
Epoch 2/2... Discriminator Loss: 1.2021... Generator Loss: 1.2461
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Epoch 2/2... Discriminator Loss: 1.0264... Generator Loss: 0.8281
Epoch 2/2... Discriminator Loss: 0.5710... Generator Loss: 1.8154
Epoch 2/2... Discriminator Loss: 0.4735... Generator Loss: 2.2984
Epoch 2/2... Discriminator Loss: 0.7532... Generator Loss: 1.3087
Epoch 2/2... Discriminator Loss: 0.7111... Generator Loss: 2.1909
Epoch 2/2... Discriminator Loss: 1.0768... Generator Loss: 0.7866
Epoch 2/2... Discriminator Loss: 1.3852... Generator Loss: 0.5010
Epoch 2/2... Discriminator Loss: 1.7500... Generator Loss: 0.3793
Epoch 2/2... Discriminator Loss: 0.8801... Generator Loss: 1.0271
Epoch 2/2... Discriminator Loss: 1.4720... Generator Loss: 0.4652
=======
Epoch 2/2... Discriminator Loss: 1.0986... Generator Loss: 0.8206
Epoch 2/2... Discriminator Loss: 1.6675... Generator Loss: 0.9882
Epoch 2/2... Discriminator Loss: 1.0746... Generator Loss: 1.0490
Epoch 2/2... Discriminator Loss: 1.4036... Generator Loss: 0.9676
Epoch 2/2... Discriminator Loss: 1.3706... Generator Loss: 1.0260
Epoch 2/2... Discriminator Loss: 1.1703... Generator Loss: 0.9882
Epoch 2/2... Discriminator Loss: 0.9508... Generator Loss: 1.1093
Epoch 2/2... Discriminator Loss: 0.9477... Generator Loss: 0.9064
Epoch 2/2... Discriminator Loss: 1.1281... Generator Loss: 1.0869
Epoch 2/2... Discriminator Loss: 1.3292... Generator Loss: 0.7201
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Epoch 2/2... Discriminator Loss: 1.4170... Generator Loss: 1.2169
Epoch 2/2... Discriminator Loss: 1.2819... Generator Loss: 1.0842
Epoch 2/2... Discriminator Loss: 1.2466... Generator Loss: 1.0226
Epoch 2/2... Discriminator Loss: 1.4533... Generator Loss: 0.8664
Epoch 2/2... Discriminator Loss: 1.2069... Generator Loss: 0.9537
Epoch 2/2... Discriminator Loss: 1.5547... Generator Loss: 0.9195
Epoch 2/2... Discriminator Loss: 1.3853... Generator Loss: 1.0199
Epoch 2/2... Discriminator Loss: 1.4052... Generator Loss: 1.2293
Epoch 2/2... Discriminator Loss: 1.1134... Generator Loss: 1.1995
Epoch 2/2... Discriminator Loss: 1.1248... Generator Loss: 0.9261
Epoch 2/2... Discriminator Loss: 1.1456... Generator Loss: 0.9775
Epoch 2/2... Discriminator Loss: 1.3694... Generator Loss: 1.0785
Epoch 2/2... Discriminator Loss: 1.3898... Generator Loss: 1.0976
Epoch 2/2... Discriminator Loss: 1.3083... Generator Loss: 1.0960
Epoch 2/2... Discriminator Loss: 1.2783... Generator Loss: 0.8169
Epoch 2/2... Discriminator Loss: 1.3941... Generator Loss: 0.9621
Epoch 2/2... Discriminator Loss: 1.3113... Generator Loss: 0.7972
Epoch 2/2... Discriminator Loss: 1.2650... Generator Loss: 0.9802
Epoch 2/2... Discriminator Loss: 1.1258... Generator Loss: 1.2635
Epoch 2/2... Discriminator Loss: 1.4169... Generator Loss: 0.8659
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Epoch 2/2... Discriminator Loss: 1.7937... Generator Loss: 0.3562
Epoch 2/2... Discriminator Loss: 0.4962... Generator Loss: 3.0618
Epoch 2/2... Discriminator Loss: 1.0231... Generator Loss: 0.8108
Epoch 2/2... Discriminator Loss: 1.8192... Generator Loss: 0.4062
Epoch 2/2... Discriminator Loss: 0.7556... Generator Loss: 1.6151
Epoch 2/2... Discriminator Loss: 0.6848... Generator Loss: 1.5539
Epoch 2/2... Discriminator Loss: 1.0129... Generator Loss: 1.0238
Epoch 2/2... Discriminator Loss: 1.4449... Generator Loss: 0.4951
Epoch 2/2... Discriminator Loss: 1.1630... Generator Loss: 0.7772
Epoch 2/2... Discriminator Loss: 1.6966... Generator Loss: 0.4507
=======
Epoch 2/2... Discriminator Loss: 1.1783... Generator Loss: 1.0566
Epoch 2/2... Discriminator Loss: 1.2190... Generator Loss: 1.0590
Epoch 2/2... Discriminator Loss: 1.2918... Generator Loss: 0.9053
Epoch 2/2... Discriminator Loss: 1.4526... Generator Loss: 0.7654
Epoch 2/2... Discriminator Loss: 1.4412... Generator Loss: 0.8812
Epoch 2/2... Discriminator Loss: 1.4111... Generator Loss: 1.0348
Epoch 2/2... Discriminator Loss: 1.1581... Generator Loss: 1.0409
Epoch 2/2... Discriminator Loss: 1.1406... Generator Loss: 0.9180
Epoch 2/2... Discriminator Loss: 1.4976... Generator Loss: 0.9248
Epoch 2/2... Discriminator Loss: 1.4319... Generator Loss: 0.9195
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Epoch 2/2... Discriminator Loss: 0.8518... Generator Loss: 4.4811
Epoch 2/2... Discriminator Loss: 0.7880... Generator Loss: 1.2428
Epoch 2/2... Discriminator Loss: 0.7069... Generator Loss: 1.3888
Epoch 2/2... Discriminator Loss: 1.4270... Generator Loss: 0.5736
Epoch 2/2... Discriminator Loss: 1.2281... Generator Loss: 0.6331
Epoch 2/2... Discriminator Loss: 0.7086... Generator Loss: 1.4005
Epoch 2/2... Discriminator Loss: 0.6815... Generator Loss: 1.4586
Epoch 2/2... Discriminator Loss: 0.7853... Generator Loss: 1.3163
Epoch 2/2... Discriminator Loss: 0.6670... Generator Loss: 1.5656
Epoch 2/2... Discriminator Loss: 0.5034... Generator Loss: 2.1674
=======
Epoch 2/2... Discriminator Loss: 1.2680... Generator Loss: 0.9411
Epoch 2/2... Discriminator Loss: 1.1511... Generator Loss: 0.7909
Epoch 2/2... Discriminator Loss: 1.1721... Generator Loss: 0.9960
Epoch 2/2... Discriminator Loss: 1.1895... Generator Loss: 1.0181
Epoch 2/2... Discriminator Loss: 1.1222... Generator Loss: 0.7254
Epoch 2/2... Discriminator Loss: 1.3290... Generator Loss: 0.8534
Epoch 2/2... Discriminator Loss: 1.0877... Generator Loss: 1.1120
Epoch 2/2... Discriminator Loss: 1.3954... Generator Loss: 0.9968
Epoch 2/2... Discriminator Loss: 1.2610... Generator Loss: 0.8738
Epoch 2/2... Discriminator Loss: 1.3490... Generator Loss: 0.7705
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Epoch 2/2... Discriminator Loss: 2.3868... Generator Loss: 0.2006
Epoch 2/2... Discriminator Loss: 0.5970... Generator Loss: 1.7958
Epoch 2/2... Discriminator Loss: 0.9144... Generator Loss: 1.0096
Epoch 2/2... Discriminator Loss: 2.2777... Generator Loss: 0.3140
Epoch 2/2... Discriminator Loss: 1.0017... Generator Loss: 0.9343
Epoch 2/2... Discriminator Loss: 0.8007... Generator Loss: 1.1645
Epoch 2/2... Discriminator Loss: 0.5910... Generator Loss: 1.7378
Epoch 2/2... Discriminator Loss: 1.2147... Generator Loss: 0.6304
Epoch 2/2... Discriminator Loss: 1.0672... Generator Loss: 3.0687
Epoch 2/2... Discriminator Loss: 1.5557... Generator Loss: 0.4545
=======
Epoch 2/2... Discriminator Loss: 0.9772... Generator Loss: 0.9771
Epoch 2/2... Discriminator Loss: 1.5123... Generator Loss: 0.8390
Epoch 2/2... Discriminator Loss: 1.5587... Generator Loss: 1.0613
Epoch 2/2... Discriminator Loss: 1.6095... Generator Loss: 0.6978
Epoch 2/2... Discriminator Loss: 1.2604... Generator Loss: 0.9981
Epoch 2/2... Discriminator Loss: 1.1054... Generator Loss: 0.7245
Epoch 2/2... Discriminator Loss: 1.3441... Generator Loss: 0.8616
Epoch 2/2... Discriminator Loss: 1.1553... Generator Loss: 0.8020
Epoch 2/2... Discriminator Loss: 1.1696... Generator Loss: 1.0696
Epoch 2/2... Discriminator Loss: 1.3358... Generator Loss: 0.7548
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Epoch 2/2... Discriminator Loss: 0.6232... Generator Loss: 1.6498
Epoch 2/2... Discriminator Loss: 1.2833... Generator Loss: 0.7147
Epoch 2/2... Discriminator Loss: 0.6208... Generator Loss: 2.0144
Epoch 2/2... Discriminator Loss: 0.6928... Generator Loss: 1.4487
Epoch 2/2... Discriminator Loss: 1.2893... Generator Loss: 3.2874
Epoch 2/2... Discriminator Loss: 0.6501... Generator Loss: 1.7473
Epoch 2/2... Discriminator Loss: 1.0761... Generator Loss: 0.7611
Epoch 2/2... Discriminator Loss: 1.4531... Generator Loss: 0.5447
Epoch 2/2... Discriminator Loss: 0.8619... Generator Loss: 2.2012
Epoch 2/2... Discriminator Loss: 2.2569... Generator Loss: 0.2440
=======
Epoch 2/2... Discriminator Loss: 1.3770... Generator Loss: 0.8475
Epoch 2/2... Discriminator Loss: 1.6244... Generator Loss: 0.9645
Epoch 2/2... Discriminator Loss: 1.3530... Generator Loss: 1.0832
Epoch 2/2... Discriminator Loss: 1.2602... Generator Loss: 0.8819
Epoch 2/2... Discriminator Loss: 1.2703... Generator Loss: 1.1869
Epoch 2/2... Discriminator Loss: 1.4105... Generator Loss: 0.9900
Epoch 2/2... Discriminator Loss: 1.1598... Generator Loss: 0.9084

CelebA

Run your GANs on CelebA. It will take around 20 minutes on the average GPU to run one epoch. You can run the whole epoch or stop when it starts to generate realistic faces.

In [17]:
batch_size = 64
z_dim = 200
learning_rate = 0.0002
beta1 = 0.5


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
epochs = 1

celeba_dataset = helper.Dataset('celeba', glob(os.path.join(data_dir, 'img_align_celeba/*.jpg')))
with tf.Graph().as_default():
    train(epochs, batch_size, z_dim, learning_rate, beta1, celeba_dataset.get_batches,
          celeba_dataset.shape, celeba_dataset.image_mode)
Epoch 1/1... Discriminator Loss: 0.8288... Generator Loss: 1.6922
Epoch 1/1... Discriminator Loss: 0.9193... Generator Loss: 1.7073
Epoch 1/1... Discriminator Loss: 1.0532... Generator Loss: 1.3602
Epoch 1/1... Discriminator Loss: 1.1160... Generator Loss: 1.1868
Epoch 1/1... Discriminator Loss: 1.0998... Generator Loss: 1.1446
Epoch 1/1... Discriminator Loss: 1.1861... Generator Loss: 1.2932
Epoch 1/1... Discriminator Loss: 1.0643... Generator Loss: 2.0605
Epoch 1/1... Discriminator Loss: 1.0329... Generator Loss: 1.3849
Epoch 1/1... Discriminator Loss: 0.9551... Generator Loss: 1.9389
Epoch 1/1... Discriminator Loss: 1.5553... Generator Loss: 0.9361
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Epoch 2/2... Discriminator Loss: 1.5755... Generator Loss: 0.4061
Epoch 2/2... Discriminator Loss: 1.4769... Generator Loss: 0.4539
Epoch 2/2... Discriminator Loss: 0.6939... Generator Loss: 2.2884
Epoch 2/2... Discriminator Loss: 0.6262... Generator Loss: 1.5701
Epoch 2/2... Discriminator Loss: 0.6629... Generator Loss: 1.7817
Epoch 2/2... Discriminator Loss: 0.5584... Generator Loss: 1.8464
Epoch 2/2... Discriminator Loss: 1.4194... Generator Loss: 0.5583

CelebA

Run your GANs on CelebA. It will take around 20 minutes on the average GPU to run one epoch. You can run the whole epoch or stop when it starts to generate realistic faces.

In [24]:
batch_size = 32
z_dim = 100
learning_rate = 0.002
beta1 = 0.5


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
epochs = 1

celeba_dataset = helper.Dataset('celeba', glob(os.path.join(data_dir, 'img_align_celeba/*.jpg')))
with tf.Graph().as_default():
    train(epochs, batch_size, z_dim, learning_rate, beta1, celeba_dataset.get_batches,
          celeba_dataset.shape, celeba_dataset.image_mode)
Epoch 1/1... Discriminator Loss: 2.5909... Generator Loss: 0.1951
Epoch 1/1... Discriminator Loss: 0.8479... Generator Loss: 1.3009
Epoch 1/1... Discriminator Loss: 0.8624... Generator Loss: 1.0691
Epoch 1/1... Discriminator Loss: 0.8760... Generator Loss: 1.5810
Epoch 1/1... Discriminator Loss: 0.7426... Generator Loss: 2.4900
Epoch 1/1... Discriminator Loss: 1.5966... Generator Loss: 0.4894
Epoch 1/1... Discriminator Loss: 0.8901... Generator Loss: 1.1001
Epoch 1/1... Discriminator Loss: 1.0249... Generator Loss: 0.8998
Epoch 1/1... Discriminator Loss: 0.8102... Generator Loss: 2.7183
Epoch 1/1... Discriminator Loss: 0.9964... Generator Loss: 1.2143
=======
Epoch 1/1... Discriminator Loss: 1.1941... Generator Loss: 1.4660
Epoch 1/1... Discriminator Loss: 1.6617... Generator Loss: 1.8961
Epoch 1/1... Discriminator Loss: 1.0727... Generator Loss: 1.4482
Epoch 1/1... Discriminator Loss: 1.7429... Generator Loss: 1.0630
Epoch 1/1... Discriminator Loss: 1.2847... Generator Loss: 1.4467
Epoch 1/1... Discriminator Loss: 1.0790... Generator Loss: 1.5478
Epoch 1/1... Discriminator Loss: 1.4112... Generator Loss: 1.2001
Epoch 1/1... Discriminator Loss: 0.9610... Generator Loss: 1.1947
Epoch 1/1... Discriminator Loss: 1.4048... Generator Loss: 1.1435
Epoch 1/1... Discriminator Loss: 0.6343... Generator Loss: 2.0014
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Epoch 1/1... Discriminator Loss: 0.9951... Generator Loss: 1.1282
Epoch 1/1... Discriminator Loss: 2.8723... Generator Loss: 4.3372
Epoch 1/1... Discriminator Loss: 1.1890... Generator Loss: 1.1057
Epoch 1/1... Discriminator Loss: 1.6765... Generator Loss: 0.5438
Epoch 1/1... Discriminator Loss: 1.0446... Generator Loss: 0.9072
Epoch 1/1... Discriminator Loss: 1.0193... Generator Loss: 1.0947
Epoch 1/1... Discriminator Loss: 1.2658... Generator Loss: 1.0093
Epoch 1/1... Discriminator Loss: 1.3036... Generator Loss: 1.1176
Epoch 1/1... Discriminator Loss: 1.0232... Generator Loss: 1.5544
Epoch 1/1... Discriminator Loss: 1.4278... Generator Loss: 0.6554
=======
Epoch 1/1... Discriminator Loss: 1.0672... Generator Loss: 1.4813
Epoch 1/1... Discriminator Loss: 1.1911... Generator Loss: 1.2295
Epoch 1/1... Discriminator Loss: 1.1732... Generator Loss: 1.1108
Epoch 1/1... Discriminator Loss: 0.8795... Generator Loss: 1.7072
Epoch 1/1... Discriminator Loss: 1.6118... Generator Loss: 1.0278
Epoch 1/1... Discriminator Loss: 1.1836... Generator Loss: 0.8439
Epoch 1/1... Discriminator Loss: 1.4662... Generator Loss: 1.1852
Epoch 1/1... Discriminator Loss: 1.2392... Generator Loss: 1.0944
Epoch 1/1... Discriminator Loss: 0.8252... Generator Loss: 2.5714
Epoch 1/1... Discriminator Loss: 1.3233... Generator Loss: 2.1518
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Epoch 1/1... Discriminator Loss: 1.5751... Generator Loss: 0.7888
Epoch 1/1... Discriminator Loss: 1.4332... Generator Loss: 0.5230
Epoch 1/1... Discriminator Loss: 1.3953... Generator Loss: 0.6968
Epoch 1/1... Discriminator Loss: 1.7570... Generator Loss: 0.3651
Epoch 1/1... Discriminator Loss: 1.4278... Generator Loss: 1.0271
Epoch 1/1... Discriminator Loss: 1.2190... Generator Loss: 0.7899
Epoch 1/1... Discriminator Loss: 1.0777... Generator Loss: 0.9476
Epoch 1/1... Discriminator Loss: 1.0894... Generator Loss: 0.8878
Epoch 1/1... Discriminator Loss: 1.3171... Generator Loss: 0.9943
Epoch 1/1... Discriminator Loss: 1.0007... Generator Loss: 1.1051
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Epoch 1/1... Discriminator Loss: 2.0839... Generator Loss: 0.7152
Epoch 1/1... Discriminator Loss: 1.8408... Generator Loss: 0.7431
Epoch 1/1... Discriminator Loss: 2.4760... Generator Loss: 0.7745
Epoch 1/1... Discriminator Loss: 1.5736... Generator Loss: 0.7094
Epoch 1/1... Discriminator Loss: 1.5771... Generator Loss: 1.0522
Epoch 1/1... Discriminator Loss: 1.6859... Generator Loss: 0.7571
Epoch 1/1... Discriminator Loss: 1.1344... Generator Loss: 1.3594
Epoch 1/1... Discriminator Loss: 1.2298... Generator Loss: 0.8157
Epoch 1/1... Discriminator Loss: 1.4128... Generator Loss: 0.7367
Epoch 1/1... Discriminator Loss: 0.7587... Generator Loss: 1.5826
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Epoch 1/1... Discriminator Loss: 1.2719... Generator Loss: 0.8442
Epoch 1/1... Discriminator Loss: 0.9097... Generator Loss: 1.2095
Epoch 1/1... Discriminator Loss: 1.1154... Generator Loss: 1.0598
Epoch 1/1... Discriminator Loss: 1.4953... Generator Loss: 0.4976
Epoch 1/1... Discriminator Loss: 1.1217... Generator Loss: 1.0205
Epoch 1/1... Discriminator Loss: 1.0652... Generator Loss: 1.1991
Epoch 1/1... Discriminator Loss: 1.1092... Generator Loss: 1.1807
Epoch 1/1... Discriminator Loss: 1.3629... Generator Loss: 0.7376
Epoch 1/1... Discriminator Loss: 1.2916... Generator Loss: 0.7911
Epoch 1/1... Discriminator Loss: 1.5510... Generator Loss: 0.5544
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Epoch 1/1... Discriminator Loss: 0.9958... Generator Loss: 1.2922
Epoch 1/1... Discriminator Loss: 0.5465... Generator Loss: 2.0003
Epoch 1/1... Discriminator Loss: 0.7455... Generator Loss: 2.0006
Epoch 1/1... Discriminator Loss: 0.5814... Generator Loss: 1.6206
Epoch 1/1... Discriminator Loss: 0.4127... Generator Loss: 3.2953
Epoch 1/1... Discriminator Loss: 0.6246... Generator Loss: 2.4058
Epoch 1/1... Discriminator Loss: 0.5585... Generator Loss: 4.5751
Epoch 1/1... Discriminator Loss: 0.3991... Generator Loss: 5.1645
Epoch 1/1... Discriminator Loss: 0.8075... Generator Loss: 1.1827
Epoch 1/1... Discriminator Loss: 0.3271... Generator Loss: 2.3067
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Epoch 1/1... Discriminator Loss: 1.1020... Generator Loss: 1.0156
Epoch 1/1... Discriminator Loss: 1.3190... Generator Loss: 0.8669
Epoch 1/1... Discriminator Loss: 1.2115... Generator Loss: 0.8696
Epoch 1/1... Discriminator Loss: 1.0600... Generator Loss: 1.0793
Epoch 1/1... Discriminator Loss: 1.1859... Generator Loss: 1.8253
Epoch 1/1... Discriminator Loss: 1.3293... Generator Loss: 0.6678
Epoch 1/1... Discriminator Loss: 1.1656... Generator Loss: 0.8141
Epoch 1/1... Discriminator Loss: 1.2126... Generator Loss: 0.8532
Epoch 1/1... Discriminator Loss: 1.0809... Generator Loss: 1.0743
Epoch 1/1... Discriminator Loss: 1.3103... Generator Loss: 0.8893
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Epoch 1/1... Discriminator Loss: 1.1422... Generator Loss: 0.5729
Epoch 1/1... Discriminator Loss: 0.5323... Generator Loss: 2.2935
Epoch 1/1... Discriminator Loss: 0.3448... Generator Loss: 2.5781
Epoch 1/1... Discriminator Loss: 0.9612... Generator Loss: 0.8991
Epoch 1/1... Discriminator Loss: 0.3712... Generator Loss: 2.1231
Epoch 1/1... Discriminator Loss: 0.1687... Generator Loss: 3.2246
Epoch 1/1... Discriminator Loss: 0.3675... Generator Loss: 2.3771
Epoch 1/1... Discriminator Loss: 1.7765... Generator Loss: 0.4410
Epoch 1/1... Discriminator Loss: 0.9459... Generator Loss: 1.0230
Epoch 1/1... Discriminator Loss: 0.5323... Generator Loss: 2.4705
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Epoch 1/1... Discriminator Loss: 1.2358... Generator Loss: 0.7200
Epoch 1/1... Discriminator Loss: 1.2436... Generator Loss: 1.4406
Epoch 1/1... Discriminator Loss: 1.1531... Generator Loss: 1.1041
Epoch 1/1... Discriminator Loss: 1.1525... Generator Loss: 0.9495
Epoch 1/1... Discriminator Loss: 1.0802... Generator Loss: 1.0770
Epoch 1/1... Discriminator Loss: 1.0046... Generator Loss: 1.3339
Epoch 1/1... Discriminator Loss: 1.2053... Generator Loss: 0.7285
Epoch 1/1... Discriminator Loss: 1.2554... Generator Loss: 0.7642
Epoch 1/1... Discriminator Loss: 1.3429... Generator Loss: 0.7898
Epoch 1/1... Discriminator Loss: 1.1489... Generator Loss: 0.9215
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Epoch 1/1... Discriminator Loss: 0.3155... Generator Loss: 4.5759
Epoch 1/1... Discriminator Loss: 0.5942... Generator Loss: 1.6663
Epoch 1/1... Discriminator Loss: 0.6381... Generator Loss: 2.8598
Epoch 1/1... Discriminator Loss: 0.6393... Generator Loss: 4.9740
Epoch 1/1... Discriminator Loss: 0.6140... Generator Loss: 1.5181
Epoch 1/1... Discriminator Loss: 0.3752... Generator Loss: 5.8158
Epoch 1/1... Discriminator Loss: 0.4984... Generator Loss: 2.5266
Epoch 1/1... Discriminator Loss: 0.5398... Generator Loss: 4.9243
Epoch 1/1... Discriminator Loss: 2.4622... Generator Loss: 0.1876
Epoch 1/1... Discriminator Loss: 1.0802... Generator Loss: 1.5911
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Epoch 1/1... Discriminator Loss: 1.1182... Generator Loss: 0.9813
Epoch 1/1... Discriminator Loss: 1.0517... Generator Loss: 1.7953
Epoch 1/1... Discriminator Loss: 1.1350... Generator Loss: 0.8309
Epoch 1/1... Discriminator Loss: 0.9293... Generator Loss: 1.4523
Epoch 1/1... Discriminator Loss: 0.9845... Generator Loss: 1.5105
Epoch 1/1... Discriminator Loss: 1.2896... Generator Loss: 2.1152
Epoch 1/1... Discriminator Loss: 1.2385... Generator Loss: 0.8756
Epoch 1/1... Discriminator Loss: 1.1243... Generator Loss: 1.1592
Epoch 1/1... Discriminator Loss: 0.9740... Generator Loss: 1.5466
Epoch 1/1... Discriminator Loss: 1.0676... Generator Loss: 1.4220
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Epoch 1/1... Discriminator Loss: 1.6823... Generator Loss: 1.2429
Epoch 1/1... Discriminator Loss: 0.7973... Generator Loss: 2.3351
Epoch 1/1... Discriminator Loss: 0.9963... Generator Loss: 2.0509
Epoch 1/1... Discriminator Loss: 0.9028... Generator Loss: 2.1015
Epoch 1/1... Discriminator Loss: 0.5853... Generator Loss: 3.7078
Epoch 1/1... Discriminator Loss: 1.8574... Generator Loss: 0.4419
Epoch 1/1... Discriminator Loss: 0.8833... Generator Loss: 3.8427
Epoch 1/1... Discriminator Loss: 0.7367... Generator Loss: 1.0248
Epoch 1/1... Discriminator Loss: 0.7953... Generator Loss: 1.3945
Epoch 1/1... Discriminator Loss: 0.9911... Generator Loss: 4.0039
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Epoch 1/1... Discriminator Loss: 1.4115... Generator Loss: 1.8459
Epoch 1/1... Discriminator Loss: 1.1532... Generator Loss: 0.9993
Epoch 1/1... Discriminator Loss: 1.2190... Generator Loss: 1.7135
Epoch 1/1... Discriminator Loss: 1.3783... Generator Loss: 0.8557
Epoch 1/1... Discriminator Loss: 1.0246... Generator Loss: 0.9284
Epoch 1/1... Discriminator Loss: 1.2040... Generator Loss: 0.9450
Epoch 1/1... Discriminator Loss: 1.0809... Generator Loss: 1.5058
Epoch 1/1... Discriminator Loss: 0.9799... Generator Loss: 1.2006
Epoch 1/1... Discriminator Loss: 1.0707... Generator Loss: 1.3797
Epoch 1/1... Discriminator Loss: 0.9273... Generator Loss: 1.6599
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Epoch 1/1... Discriminator Loss: 0.9094... Generator Loss: 2.3774
Epoch 1/1... Discriminator Loss: 0.9132... Generator Loss: 5.2354
Epoch 1/1... Discriminator Loss: 0.2519... Generator Loss: 3.4196
Epoch 1/1... Discriminator Loss: 1.0463... Generator Loss: 1.9621
Epoch 1/1... Discriminator Loss: 0.3745... Generator Loss: 2.8671
Epoch 1/1... Discriminator Loss: 1.1919... Generator Loss: 0.7213
Epoch 1/1... Discriminator Loss: 1.4611... Generator Loss: 0.9907
Epoch 1/1... Discriminator Loss: 0.9111... Generator Loss: 1.1049
Epoch 1/1... Discriminator Loss: 2.0753... Generator Loss: 0.3504
Epoch 1/1... Discriminator Loss: 1.2328... Generator Loss: 0.7894
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Epoch 1/1... Discriminator Loss: 1.1731... Generator Loss: 0.8293
Epoch 1/1... Discriminator Loss: 0.9930... Generator Loss: 1.2877
Epoch 1/1... Discriminator Loss: 1.0785... Generator Loss: 1.2781
Epoch 1/1... Discriminator Loss: 1.1214... Generator Loss: 0.9927
Epoch 1/1... Discriminator Loss: 1.0236... Generator Loss: 1.9208
Epoch 1/1... Discriminator Loss: 1.1371... Generator Loss: 0.8156
Epoch 1/1... Discriminator Loss: 1.1855... Generator Loss: 1.1183
Epoch 1/1... Discriminator Loss: 1.0011... Generator Loss: 1.3068
Epoch 1/1... Discriminator Loss: 1.4547... Generator Loss: 0.6745
Epoch 1/1... Discriminator Loss: 1.1078... Generator Loss: 0.9946
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Epoch 1/1... Discriminator Loss: 0.5706... Generator Loss: 1.5468
Epoch 1/1... Discriminator Loss: 0.5649... Generator Loss: 2.0765
Epoch 1/1... Discriminator Loss: 0.6685... Generator Loss: 3.5649
Epoch 1/1... Discriminator Loss: 0.9437... Generator Loss: 1.0655
Epoch 1/1... Discriminator Loss: 0.5848... Generator Loss: 3.2673
Epoch 1/1... Discriminator Loss: 0.8481... Generator Loss: 1.8688
Epoch 1/1... Discriminator Loss: 0.3590... Generator Loss: 4.0870
Epoch 1/1... Discriminator Loss: 1.1194... Generator Loss: 2.1414
Epoch 1/1... Discriminator Loss: 1.0907... Generator Loss: 1.2495
Epoch 1/1... Discriminator Loss: 0.9258... Generator Loss: 2.0750
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Epoch 1/1... Discriminator Loss: 1.0098... Generator Loss: 1.1865
Epoch 1/1... Discriminator Loss: 1.0768... Generator Loss: 1.0833
Epoch 1/1... Discriminator Loss: 1.4090... Generator Loss: 0.5601
Epoch 1/1... Discriminator Loss: 1.0180... Generator Loss: 1.0960
Epoch 1/1... Discriminator Loss: 1.0589... Generator Loss: 1.0734
Epoch 1/1... Discriminator Loss: 1.6220... Generator Loss: 3.0091
Epoch 1/1... Discriminator Loss: 1.0775... Generator Loss: 1.2077
Epoch 1/1... Discriminator Loss: 0.9734... Generator Loss: 0.9806
Epoch 1/1... Discriminator Loss: 1.1599... Generator Loss: 1.3013
Epoch 1/1... Discriminator Loss: 1.1248... Generator Loss: 0.9200
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Epoch 1/1... Discriminator Loss: 1.3735... Generator Loss: 0.6689
Epoch 1/1... Discriminator Loss: 1.1953... Generator Loss: 0.6654
Epoch 1/1... Discriminator Loss: 2.1842... Generator Loss: 0.2424
Epoch 1/1... Discriminator Loss: 1.9146... Generator Loss: 0.2501
Epoch 1/1... Discriminator Loss: 2.2706... Generator Loss: 0.1996
Epoch 1/1... Discriminator Loss: 1.4266... Generator Loss: 1.8665
Epoch 1/1... Discriminator Loss: 1.6017... Generator Loss: 0.8239
Epoch 1/1... Discriminator Loss: 1.0099... Generator Loss: 0.6653
Epoch 1/1... Discriminator Loss: 1.5254... Generator Loss: 1.2348
Epoch 1/1... Discriminator Loss: 1.3995... Generator Loss: 0.7963
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Epoch 1/1... Discriminator Loss: 1.1716... Generator Loss: 0.7883
Epoch 1/1... Discriminator Loss: 1.1934... Generator Loss: 1.0242
Epoch 1/1... Discriminator Loss: 1.4323... Generator Loss: 0.4963
Epoch 1/1... Discriminator Loss: 1.1926... Generator Loss: 0.7534
Epoch 1/1... Discriminator Loss: 1.1419... Generator Loss: 1.0730
Epoch 1/1... Discriminator Loss: 1.0938... Generator Loss: 0.9455
Epoch 1/1... Discriminator Loss: 1.4614... Generator Loss: 0.5311
Epoch 1/1... Discriminator Loss: 1.0965... Generator Loss: 1.0509
Epoch 1/1... Discriminator Loss: 0.8957... Generator Loss: 1.2644
Epoch 1/1... Discriminator Loss: 1.3473... Generator Loss: 0.6339
Epoch 1/1... Discriminator Loss: 0.9818... Generator Loss: 1.3153
Epoch 1/1... Discriminator Loss: 1.4103... Generator Loss: 0.5418
Epoch 1/1... Discriminator Loss: 1.1570... Generator Loss: 1.0859
Epoch 1/1... Discriminator Loss: 1.2321... Generator Loss: 0.7738
Epoch 1/1... Discriminator Loss: 1.0457... Generator Loss: 0.9891
Epoch 1/1... Discriminator Loss: 1.0290... Generator Loss: 1.3661
Epoch 1/1... Discriminator Loss: 1.2130... Generator Loss: 0.9711
Epoch 1/1... Discriminator Loss: 1.0259... Generator Loss: 1.0685
Epoch 1/1... Discriminator Loss: 1.1802... Generator Loss: 0.9876
Epoch 1/1... Discriminator Loss: 1.0864... Generator Loss: 1.2215
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Epoch 1/1... Discriminator Loss: 1.1558... Generator Loss: 0.8860
Epoch 1/1... Discriminator Loss: 1.1739... Generator Loss: 0.8217
Epoch 1/1... Discriminator Loss: 1.6111... Generator Loss: 0.4283
Epoch 1/1... Discriminator Loss: 0.9394... Generator Loss: 1.2024
Epoch 1/1... Discriminator Loss: 1.0463... Generator Loss: 1.1641
Epoch 1/1... Discriminator Loss: 1.0031... Generator Loss: 1.2496
Epoch 1/1... Discriminator Loss: 1.3902... Generator Loss: 0.5864
Epoch 1/1... Discriminator Loss: 1.5990... Generator Loss: 0.4570
Epoch 1/1... Discriminator Loss: 1.2519... Generator Loss: 0.7989
Epoch 1/1... Discriminator Loss: 1.1210... Generator Loss: 0.9431
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Epoch 1/1... Discriminator Loss: 1.0861... Generator Loss: 1.3080
Epoch 1/1... Discriminator Loss: 0.8584... Generator Loss: 1.3333
Epoch 1/1... Discriminator Loss: 0.6449... Generator Loss: 1.9542
Epoch 1/1... Discriminator Loss: 1.1306... Generator Loss: 1.4759
Epoch 1/1... Discriminator Loss: 1.6928... Generator Loss: 0.3186
Epoch 1/1... Discriminator Loss: 1.0414... Generator Loss: 1.8163
Epoch 1/1... Discriminator Loss: 2.3503... Generator Loss: 0.2007
Epoch 1/1... Discriminator Loss: 1.7903... Generator Loss: 0.4937
Epoch 1/1... Discriminator Loss: 1.2577... Generator Loss: 1.3606
Epoch 1/1... Discriminator Loss: 0.4078... Generator Loss: 1.8894
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Epoch 1/1... Discriminator Loss: 1.2682... Generator Loss: 0.7215
Epoch 1/1... Discriminator Loss: 1.0742... Generator Loss: 0.9777
Epoch 1/1... Discriminator Loss: 1.2022... Generator Loss: 0.8202
Epoch 1/1... Discriminator Loss: 1.3192... Generator Loss: 0.6891
Epoch 1/1... Discriminator Loss: 1.1848... Generator Loss: 1.2109
Epoch 1/1... Discriminator Loss: 1.2099... Generator Loss: 0.8361
Epoch 1/1... Discriminator Loss: 1.1153... Generator Loss: 0.8488
Epoch 1/1... Discriminator Loss: 1.1840... Generator Loss: 0.7010
Epoch 1/1... Discriminator Loss: 1.3287... Generator Loss: 0.7252
Epoch 1/1... Discriminator Loss: 1.3108... Generator Loss: 0.6715
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Epoch 1/1... Discriminator Loss: 1.0524... Generator Loss: 1.9214
Epoch 1/1... Discriminator Loss: 1.0843... Generator Loss: 1.3274
Epoch 1/1... Discriminator Loss: 0.7655... Generator Loss: 1.6789
Epoch 1/1... Discriminator Loss: 0.6780... Generator Loss: 3.5639
Epoch 1/1... Discriminator Loss: 1.1759... Generator Loss: 1.0231
Epoch 1/1... Discriminator Loss: 0.5232... Generator Loss: 3.5084
Epoch 1/1... Discriminator Loss: 1.4890... Generator Loss: 0.5673
Epoch 1/1... Discriminator Loss: 0.8519... Generator Loss: 3.4551
Epoch 1/1... Discriminator Loss: 0.8062... Generator Loss: 1.8637
Epoch 1/1... Discriminator Loss: 1.4301... Generator Loss: 1.1447
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Epoch 1/1... Discriminator Loss: 1.2771... Generator Loss: 0.8304
Epoch 1/1... Discriminator Loss: 1.3192... Generator Loss: 0.7029
Epoch 1/1... Discriminator Loss: 1.0989... Generator Loss: 1.1694
Epoch 1/1... Discriminator Loss: 1.0402... Generator Loss: 0.9894
Epoch 1/1... Discriminator Loss: 1.0381... Generator Loss: 1.3685
Epoch 1/1... Discriminator Loss: 1.2095... Generator Loss: 0.9374
Epoch 1/1... Discriminator Loss: 1.3868... Generator Loss: 0.6540
Epoch 1/1... Discriminator Loss: 1.1591... Generator Loss: 0.8758
Epoch 1/1... Discriminator Loss: 1.2881... Generator Loss: 0.6623
Epoch 1/1... Discriminator Loss: 1.1031... Generator Loss: 1.0680
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Epoch 1/1... Discriminator Loss: 0.7269... Generator Loss: 1.3038
Epoch 1/1... Discriminator Loss: 1.8040... Generator Loss: 0.2663
Epoch 1/1... Discriminator Loss: 1.2949... Generator Loss: 1.1726
Epoch 1/1... Discriminator Loss: 0.9563... Generator Loss: 1.7350
Epoch 1/1... Discriminator Loss: 0.7371... Generator Loss: 2.4862
Epoch 1/1... Discriminator Loss: 0.6779... Generator Loss: 1.3534
Epoch 1/1... Discriminator Loss: 1.4419... Generator Loss: 0.7554
Epoch 1/1... Discriminator Loss: 0.9518... Generator Loss: 4.9048
Epoch 1/1... Discriminator Loss: 0.4621... Generator Loss: 2.3119
Epoch 1/1... Discriminator Loss: 0.4765... Generator Loss: 2.2206
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Epoch 1/1... Discriminator Loss: 1.1616... Generator Loss: 0.7789
Epoch 1/1... Discriminator Loss: 1.1309... Generator Loss: 1.0386
Epoch 1/1... Discriminator Loss: 1.0791... Generator Loss: 1.0587
Epoch 1/1... Discriminator Loss: 1.0410... Generator Loss: 1.0269
Epoch 1/1... Discriminator Loss: 1.3856... Generator Loss: 0.6471
Epoch 1/1... Discriminator Loss: 1.2387... Generator Loss: 1.1803
Epoch 1/1... Discriminator Loss: 1.1366... Generator Loss: 1.2120
Epoch 1/1... Discriminator Loss: 1.1221... Generator Loss: 1.0881
Epoch 1/1... Discriminator Loss: 1.1818... Generator Loss: 0.8659
Epoch 1/1... Discriminator Loss: 1.1584... Generator Loss: 0.8263
Epoch 1/1... Discriminator Loss: 1.0676... Generator Loss: 0.9091
Epoch 1/1... Discriminator Loss: 0.9805... Generator Loss: 1.1110
Epoch 1/1... Discriminator Loss: 1.0741... Generator Loss: 1.0052
Epoch 1/1... Discriminator Loss: 1.1684... Generator Loss: 0.7952
Epoch 1/1... Discriminator Loss: 1.1423... Generator Loss: 0.9097
Epoch 1/1... Discriminator Loss: 1.2467... Generator Loss: 0.9756
Epoch 1/1... Discriminator Loss: 1.1180... Generator Loss: 0.8807
Epoch 1/1... Discriminator Loss: 1.0678... Generator Loss: 1.0625
Epoch 1/1... Discriminator Loss: 1.1743... Generator Loss: 1.1939
Epoch 1/1... Discriminator Loss: 1.2710... Generator Loss: 0.7538
Epoch 1/1... Discriminator Loss: 1.1772... Generator Loss: 0.8397
Epoch 1/1... Discriminator Loss: 1.3681... Generator Loss: 0.7312
Epoch 1/1... Discriminator Loss: 1.0725... Generator Loss: 1.1818
Epoch 1/1... Discriminator Loss: 1.2201... Generator Loss: 0.9043
Epoch 1/1... Discriminator Loss: 1.2060... Generator Loss: 0.9154
Epoch 1/1... Discriminator Loss: 1.0649... Generator Loss: 1.0089
Epoch 1/1... Discriminator Loss: 1.1623... Generator Loss: 1.0503
Epoch 1/1... Discriminator Loss: 1.2428... Generator Loss: 0.8053
Epoch 1/1... Discriminator Loss: 1.1452... Generator Loss: 1.1314
Epoch 1/1... Discriminator Loss: 1.0357... Generator Loss: 1.4397
Epoch 1/1... Discriminator Loss: 1.1963... Generator Loss: 0.7679
Epoch 1/1... Discriminator Loss: 1.1410... Generator Loss: 0.8128
Epoch 1/1... Discriminator Loss: 1.1485... Generator Loss: 0.9865
Epoch 1/1... Discriminator Loss: 1.3190... Generator Loss: 0.8277
Epoch 1/1... Discriminator Loss: 1.0736... Generator Loss: 1.1347
Epoch 1/1... Discriminator Loss: 1.2156... Generator Loss: 0.8360
Epoch 1/1... Discriminator Loss: 1.1925... Generator Loss: 0.9889
Epoch 1/1... Discriminator Loss: 1.3064... Generator Loss: 0.8023
Epoch 1/1... Discriminator Loss: 1.1506... Generator Loss: 0.7737
Epoch 1/1... Discriminator Loss: 1.2760... Generator Loss: 0.7027
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Epoch 1/1... Discriminator Loss: 1.4553... Generator Loss: 0.4109
Epoch 1/1... Discriminator Loss: 0.9050... Generator Loss: 1.3861
Epoch 1/1... Discriminator Loss: 0.8056... Generator Loss: 1.4079
Epoch 1/1... Discriminator Loss: 0.6026... Generator Loss: 1.9177
Epoch 1/1... Discriminator Loss: 0.8828... Generator Loss: 0.9269
Epoch 1/1... Discriminator Loss: 1.3168... Generator Loss: 0.7102
Epoch 1/1... Discriminator Loss: 0.6717... Generator Loss: 1.1000
Epoch 1/1... Discriminator Loss: 0.3519... Generator Loss: 2.1468
Epoch 1/1... Discriminator Loss: 1.2226... Generator Loss: 1.2810
Epoch 1/1... Discriminator Loss: 2.1441... Generator Loss: 0.1658
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Epoch 1/1... Discriminator Loss: 1.2059... Generator Loss: 1.1682
Epoch 1/1... Discriminator Loss: 1.4327... Generator Loss: 2.0428
Epoch 1/1... Discriminator Loss: 1.3663... Generator Loss: 0.5236
Epoch 1/1... Discriminator Loss: 1.1592... Generator Loss: 0.9158
Epoch 1/1... Discriminator Loss: 1.2512... Generator Loss: 0.8208
Epoch 1/1... Discriminator Loss: 1.1147... Generator Loss: 0.9914
Epoch 1/1... Discriminator Loss: 1.4077... Generator Loss: 0.5527
Epoch 1/1... Discriminator Loss: 1.1277... Generator Loss: 1.3419
Epoch 1/1... Discriminator Loss: 1.1051... Generator Loss: 0.9922
Epoch 1/1... Discriminator Loss: 1.2141... Generator Loss: 0.8442
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Epoch 1/1... Discriminator Loss: 0.7284... Generator Loss: 3.7189
Epoch 1/1... Discriminator Loss: 1.2053... Generator Loss: 0.8733
Epoch 1/1... Discriminator Loss: 0.5076... Generator Loss: 3.4242
Epoch 1/1... Discriminator Loss: 1.6474... Generator Loss: 0.3378
Epoch 1/1... Discriminator Loss: 1.4368... Generator Loss: 1.2062
Epoch 1/1... Discriminator Loss: 1.5990... Generator Loss: 0.4126
Epoch 1/1... Discriminator Loss: 1.1425... Generator Loss: 0.6765
Epoch 1/1... Discriminator Loss: 0.5953... Generator Loss: 4.0278
Epoch 1/1... Discriminator Loss: 1.3708... Generator Loss: 0.4986
Epoch 1/1... Discriminator Loss: 0.2658... Generator Loss: 2.7608
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Epoch 1/1... Discriminator Loss: 1.2188... Generator Loss: 1.2676
Epoch 1/1... Discriminator Loss: 1.1652... Generator Loss: 1.0792
Epoch 1/1... Discriminator Loss: 0.9577... Generator Loss: 1.2586
Epoch 1/1... Discriminator Loss: 1.0321... Generator Loss: 1.0459
Epoch 1/1... Discriminator Loss: 1.2840... Generator Loss: 0.8723
Epoch 1/1... Discriminator Loss: 1.2586... Generator Loss: 0.7530
Epoch 1/1... Discriminator Loss: 1.0567... Generator Loss: 0.8605
Epoch 1/1... Discriminator Loss: 1.2406... Generator Loss: 0.7771
Epoch 1/1... Discriminator Loss: 1.2712... Generator Loss: 0.8332
Epoch 1/1... Discriminator Loss: 1.1414... Generator Loss: 0.9978
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Epoch 1/1... Discriminator Loss: 1.6844... Generator Loss: 0.5533
Epoch 1/1... Discriminator Loss: 0.7963... Generator Loss: 2.2392
Epoch 1/1... Discriminator Loss: 1.5556... Generator Loss: 0.6505
Epoch 1/1... Discriminator Loss: 1.2583... Generator Loss: 1.0514
Epoch 1/1... Discriminator Loss: 0.7494... Generator Loss: 0.9391
Epoch 1/1... Discriminator Loss: 1.5208... Generator Loss: 1.2048
Epoch 1/1... Discriminator Loss: 1.0871... Generator Loss: 1.9264
Epoch 1/1... Discriminator Loss: 1.2897... Generator Loss: 0.8407
Epoch 1/1... Discriminator Loss: 1.5258... Generator Loss: 0.4425
Epoch 1/1... Discriminator Loss: 1.3297... Generator Loss: 0.8419
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Epoch 1/1... Discriminator Loss: 1.1568... Generator Loss: 0.9911
Epoch 1/1... Discriminator Loss: 1.2425... Generator Loss: 0.9232
Epoch 1/1... Discriminator Loss: 1.3252... Generator Loss: 0.8926
Epoch 1/1... Discriminator Loss: 1.1751... Generator Loss: 1.0346
Epoch 1/1... Discriminator Loss: 1.1966... Generator Loss: 0.7312
Epoch 1/1... Discriminator Loss: 1.1727... Generator Loss: 0.8904
Epoch 1/1... Discriminator Loss: 1.2751... Generator Loss: 0.6586
Epoch 1/1... Discriminator Loss: 1.0669... Generator Loss: 1.0133
Epoch 1/1... Discriminator Loss: 1.2345... Generator Loss: 0.7101
Epoch 1/1... Discriminator Loss: 1.1187... Generator Loss: 0.9195
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Epoch 1/1... Discriminator Loss: 0.8973... Generator Loss: 1.3590
Epoch 1/1... Discriminator Loss: 0.4911... Generator Loss: 3.0888
Epoch 1/1... Discriminator Loss: 1.2658... Generator Loss: 0.9247
Epoch 1/1... Discriminator Loss: 1.8092... Generator Loss: 0.6068
Epoch 1/1... Discriminator Loss: 1.0141... Generator Loss: 0.9258
Epoch 1/1... Discriminator Loss: 1.3435... Generator Loss: 0.5114
Epoch 1/1... Discriminator Loss: 0.8817... Generator Loss: 1.9513
Epoch 1/1... Discriminator Loss: 0.5613... Generator Loss: 2.0694
Epoch 1/1... Discriminator Loss: 0.8557... Generator Loss: 1.9092
Epoch 1/1... Discriminator Loss: 1.2139... Generator Loss: 0.7489
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Epoch 1/1... Discriminator Loss: 1.3653... Generator Loss: 0.6129
Epoch 1/1... Discriminator Loss: 1.1524... Generator Loss: 0.9467
Epoch 1/1... Discriminator Loss: 1.0579... Generator Loss: 1.2621
Epoch 1/1... Discriminator Loss: 1.1507... Generator Loss: 0.8465
Epoch 1/1... Discriminator Loss: 1.1759... Generator Loss: 0.7773
Epoch 1/1... Discriminator Loss: 1.1801... Generator Loss: 0.8412
Epoch 1/1... Discriminator Loss: 1.2859... Generator Loss: 0.7506
Epoch 1/1... Discriminator Loss: 1.0929... Generator Loss: 1.2300
Epoch 1/1... Discriminator Loss: 1.2273... Generator Loss: 0.6887
Epoch 1/1... Discriminator Loss: 1.1529... Generator Loss: 1.0037
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Epoch 1/1... Discriminator Loss: 0.6676... Generator Loss: 1.7419
Epoch 1/1... Discriminator Loss: 1.2415... Generator Loss: 0.8356
Epoch 1/1... Discriminator Loss: 1.0403... Generator Loss: 1.5765
Epoch 1/1... Discriminator Loss: 1.1815... Generator Loss: 1.0338
Epoch 1/1... Discriminator Loss: 0.3303... Generator Loss: 2.9124
Epoch 1/1... Discriminator Loss: 2.0196... Generator Loss: 0.2764
Epoch 1/1... Discriminator Loss: 1.1948... Generator Loss: 1.0728
Epoch 1/1... Discriminator Loss: 1.3296... Generator Loss: 0.8123
Epoch 1/1... Discriminator Loss: 1.1231... Generator Loss: 0.8428
Epoch 1/1... Discriminator Loss: 0.8045... Generator Loss: 2.1366
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Epoch 1/1... Discriminator Loss: 1.2479... Generator Loss: 0.7136
Epoch 1/1... Discriminator Loss: 1.1336... Generator Loss: 0.9520
Epoch 1/1... Discriminator Loss: 1.1989... Generator Loss: 1.0260
Epoch 1/1... Discriminator Loss: 1.1896... Generator Loss: 0.8921
Epoch 1/1... Discriminator Loss: 1.1740... Generator Loss: 0.8749
Epoch 1/1... Discriminator Loss: 1.1008... Generator Loss: 0.9948
Epoch 1/1... Discriminator Loss: 1.3433... Generator Loss: 0.6958
Epoch 1/1... Discriminator Loss: 1.2309... Generator Loss: 0.7656
Epoch 1/1... Discriminator Loss: 1.1411... Generator Loss: 1.0334
Epoch 1/1... Discriminator Loss: 1.0151... Generator Loss: 1.0665
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Epoch 1/1... Discriminator Loss: 1.6250... Generator Loss: 0.5263
Epoch 1/1... Discriminator Loss: 0.8997... Generator Loss: 1.1614
Epoch 1/1... Discriminator Loss: 0.5037... Generator Loss: 2.5220
Epoch 1/1... Discriminator Loss: 1.1462... Generator Loss: 0.9082
Epoch 1/1... Discriminator Loss: 0.5578... Generator Loss: 1.5725
Epoch 1/1... Discriminator Loss: 1.2614... Generator Loss: 1.0134
Epoch 1/1... Discriminator Loss: 0.5309... Generator Loss: 1.7175
Epoch 1/1... Discriminator Loss: 1.1824... Generator Loss: 1.1262
Epoch 1/1... Discriminator Loss: 1.1312... Generator Loss: 1.5369
Epoch 1/1... Discriminator Loss: 0.6410... Generator Loss: 4.1249
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Epoch 1/1... Discriminator Loss: 1.2719... Generator Loss: 0.6902
Epoch 1/1... Discriminator Loss: 1.2563... Generator Loss: 0.7572
Epoch 1/1... Discriminator Loss: 1.2703... Generator Loss: 0.6885
Epoch 1/1... Discriminator Loss: 1.1444... Generator Loss: 0.7847
Epoch 1/1... Discriminator Loss: 1.1108... Generator Loss: 0.9762
Epoch 1/1... Discriminator Loss: 1.1769... Generator Loss: 0.8367
Epoch 1/1... Discriminator Loss: 1.2054... Generator Loss: 0.9191
Epoch 1/1... Discriminator Loss: 1.1482... Generator Loss: 1.1563
Epoch 1/1... Discriminator Loss: 1.2344... Generator Loss: 1.4100
Epoch 1/1... Discriminator Loss: 1.3247... Generator Loss: 0.7392
Epoch 1/1... Discriminator Loss: 1.1983... Generator Loss: 0.8494
Epoch 1/1... Discriminator Loss: 1.0653... Generator Loss: 0.9893
Epoch 1/1... Discriminator Loss: 1.1901... Generator Loss: 0.8421
Epoch 1/1... Discriminator Loss: 1.1963... Generator Loss: 0.8076
Epoch 1/1... Discriminator Loss: 1.2890... Generator Loss: 0.6901
Epoch 1/1... Discriminator Loss: 1.2340... Generator Loss: 0.7419
Epoch 1/1... Discriminator Loss: 1.2849... Generator Loss: 0.6251
Epoch 1/1... Discriminator Loss: 1.3329... Generator Loss: 0.8887
Epoch 1/1... Discriminator Loss: 1.1936... Generator Loss: 0.8633
Epoch 1/1... Discriminator Loss: 1.1808... Generator Loss: 0.8001
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Epoch 1/1... Discriminator Loss: 1.1243... Generator Loss: 0.6539
Epoch 1/1... Discriminator Loss: 0.8909... Generator Loss: 1.3759
Epoch 1/1... Discriminator Loss: 0.5564... Generator Loss: 2.3711
Epoch 1/1... Discriminator Loss: 1.2562... Generator Loss: 0.9284
Epoch 1/1... Discriminator Loss: 1.2090... Generator Loss: 1.3541
Epoch 1/1... Discriminator Loss: 0.6467... Generator Loss: 3.5352
Epoch 1/1... Discriminator Loss: 0.4449... Generator Loss: 1.6174
Epoch 1/1... Discriminator Loss: 0.2061... Generator Loss: 2.6537
Epoch 1/1... Discriminator Loss: 1.3819... Generator Loss: 0.5367
Epoch 1/1... Discriminator Loss: 1.6121... Generator Loss: 0.3545
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Epoch 1/1... Discriminator Loss: 1.0846... Generator Loss: 1.0298
Epoch 1/1... Discriminator Loss: 1.0567... Generator Loss: 1.0980
Epoch 1/1... Discriminator Loss: 1.3548... Generator Loss: 0.8073
Epoch 1/1... Discriminator Loss: 1.0504... Generator Loss: 1.0452
Epoch 1/1... Discriminator Loss: 1.1558... Generator Loss: 0.8336
Epoch 1/1... Discriminator Loss: 1.2263... Generator Loss: 0.8962
Epoch 1/1... Discriminator Loss: 1.0674... Generator Loss: 1.0362
Epoch 1/1... Discriminator Loss: 1.3242... Generator Loss: 1.0016
Epoch 1/1... Discriminator Loss: 1.2521... Generator Loss: 0.8493
Epoch 1/1... Discriminator Loss: 1.2093... Generator Loss: 0.7440
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Epoch 1/1... Discriminator Loss: 1.5465... Generator Loss: 1.2020
Epoch 1/1... Discriminator Loss: 1.4094... Generator Loss: 0.8164
Epoch 1/1... Discriminator Loss: 0.5318... Generator Loss: 2.2568
Epoch 1/1... Discriminator Loss: 0.7494... Generator Loss: 1.2461
Epoch 1/1... Discriminator Loss: 1.2253... Generator Loss: 0.9063
Epoch 1/1... Discriminator Loss: 0.8421... Generator Loss: 1.1594
Epoch 1/1... Discriminator Loss: 1.1616... Generator Loss: 1.2824
Epoch 1/1... Discriminator Loss: 0.5520... Generator Loss: 2.1210
Epoch 1/1... Discriminator Loss: 1.2810... Generator Loss: 0.6844
Epoch 1/1... Discriminator Loss: 0.4041... Generator Loss: 1.9041
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Epoch 1/1... Discriminator Loss: 1.0604... Generator Loss: 1.0047
Epoch 1/1... Discriminator Loss: 1.3020... Generator Loss: 0.7631
Epoch 1/1... Discriminator Loss: 1.2285... Generator Loss: 0.8067
Epoch 1/1... Discriminator Loss: 1.1748... Generator Loss: 0.8895
Epoch 1/1... Discriminator Loss: 1.3184... Generator Loss: 0.6621
Epoch 1/1... Discriminator Loss: 1.2699... Generator Loss: 0.7775
Epoch 1/1... Discriminator Loss: 1.1920... Generator Loss: 0.8788
Epoch 1/1... Discriminator Loss: 1.1615... Generator Loss: 0.8520
Epoch 1/1... Discriminator Loss: 1.2051... Generator Loss: 0.9290
Epoch 1/1... Discriminator Loss: 1.1335... Generator Loss: 1.0094
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Epoch 1/1... Discriminator Loss: 0.7068... Generator Loss: 1.6174
Epoch 1/1... Discriminator Loss: 0.7856... Generator Loss: 1.3564
Epoch 1/1... Discriminator Loss: 2.0791... Generator Loss: 0.2167
Epoch 1/1... Discriminator Loss: 1.6001... Generator Loss: 0.6057
Epoch 1/1... Discriminator Loss: 1.4392... Generator Loss: 0.4816
Epoch 1/1... Discriminator Loss: 0.5341... Generator Loss: 2.1160
Epoch 1/1... Discriminator Loss: 1.4667... Generator Loss: 0.4180
Epoch 1/1... Discriminator Loss: 1.5292... Generator Loss: 0.8319
Epoch 1/1... Discriminator Loss: 0.5009... Generator Loss: 2.0940
Epoch 1/1... Discriminator Loss: 0.6231... Generator Loss: 3.5113
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Epoch 1/1... Discriminator Loss: 1.2532... Generator Loss: 0.9588
Epoch 1/1... Discriminator Loss: 1.1488... Generator Loss: 0.8201
Epoch 1/1... Discriminator Loss: 1.2767... Generator Loss: 0.7022
Epoch 1/1... Discriminator Loss: 1.2313... Generator Loss: 0.9825
Epoch 1/1... Discriminator Loss: 1.5523... Generator Loss: 0.4617
Epoch 1/1... Discriminator Loss: 1.2533... Generator Loss: 0.8256
Epoch 1/1... Discriminator Loss: 1.4288... Generator Loss: 0.5259
Epoch 1/1... Discriminator Loss: 1.2545... Generator Loss: 0.8200
Epoch 1/1... Discriminator Loss: 1.3287... Generator Loss: 0.8248
Epoch 1/1... Discriminator Loss: 1.2565... Generator Loss: 0.8558
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Epoch 1/1... Discriminator Loss: 1.3465... Generator Loss: 1.0530
Epoch 1/1... Discriminator Loss: 0.6605... Generator Loss: 1.7281
Epoch 1/1... Discriminator Loss: 1.0955... Generator Loss: 1.4930
Epoch 1/1... Discriminator Loss: 0.4754... Generator Loss: 1.8038
Epoch 1/1... Discriminator Loss: 0.9434... Generator Loss: 1.1092
Epoch 1/1... Discriminator Loss: 1.1842... Generator Loss: 1.2154
Epoch 1/1... Discriminator Loss: 1.6872... Generator Loss: 1.7764
Epoch 1/1... Discriminator Loss: 0.8577... Generator Loss: 1.0859
Epoch 1/1... Discriminator Loss: 1.1511... Generator Loss: 0.7736
Epoch 1/1... Discriminator Loss: 0.8830... Generator Loss: 1.1177
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Epoch 1/1... Discriminator Loss: 1.2838... Generator Loss: 0.6766
Epoch 1/1... Discriminator Loss: 1.2177... Generator Loss: 0.8709
Epoch 1/1... Discriminator Loss: 1.2549... Generator Loss: 0.8720
Epoch 1/1... Discriminator Loss: 1.2501... Generator Loss: 0.7708
Epoch 1/1... Discriminator Loss: 1.2927... Generator Loss: 0.8466
Epoch 1/1... Discriminator Loss: 1.2497... Generator Loss: 0.8484
Epoch 1/1... Discriminator Loss: 1.1550... Generator Loss: 0.9234
Epoch 1/1... Discriminator Loss: 1.1361... Generator Loss: 0.9327
Epoch 1/1... Discriminator Loss: 1.2061... Generator Loss: 0.8174
Epoch 1/1... Discriminator Loss: 1.1501... Generator Loss: 0.8483
Epoch 1/1... Discriminator Loss: 1.3539... Generator Loss: 0.7343
Epoch 1/1... Discriminator Loss: 1.2878... Generator Loss: 0.7681
Epoch 1/1... Discriminator Loss: 1.2275... Generator Loss: 0.8221
Epoch 1/1... Discriminator Loss: 1.1409... Generator Loss: 0.9464
Epoch 1/1... Discriminator Loss: 1.1366... Generator Loss: 0.9711
Epoch 1/1... Discriminator Loss: 1.3183... Generator Loss: 0.7618
Epoch 1/1... Discriminator Loss: 1.1069... Generator Loss: 0.9075
Epoch 1/1... Discriminator Loss: 1.2040... Generator Loss: 0.7737
Epoch 1/1... Discriminator Loss: 1.4066... Generator Loss: 0.5986
Epoch 1/1... Discriminator Loss: 1.3420... Generator Loss: 0.8010
Epoch 1/1... Discriminator Loss: 1.2771... Generator Loss: 0.7112
Epoch 1/1... Discriminator Loss: 1.2493... Generator Loss: 0.8254
Epoch 1/1... Discriminator Loss: 1.3320... Generator Loss: 1.0391
Epoch 1/1... Discriminator Loss: 1.3614... Generator Loss: 0.5921
Epoch 1/1... Discriminator Loss: 1.3058... Generator Loss: 0.7546
Epoch 1/1... Discriminator Loss: 1.1792... Generator Loss: 0.9297
Epoch 1/1... Discriminator Loss: 1.1480... Generator Loss: 0.9406
Epoch 1/1... Discriminator Loss: 1.3049... Generator Loss: 0.8077
Epoch 1/1... Discriminator Loss: 1.2147... Generator Loss: 0.7967
Epoch 1/1... Discriminator Loss: 1.1427... Generator Loss: 0.9995
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Epoch 1/1... Discriminator Loss: 1.2007... Generator Loss: 0.9437
Epoch 1/1... Discriminator Loss: 1.2479... Generator Loss: 0.9748
Epoch 1/1... Discriminator Loss: 1.1217... Generator Loss: 0.9729
Epoch 1/1... Discriminator Loss: 1.4152... Generator Loss: 0.6105
Epoch 1/1... Discriminator Loss: 1.2807... Generator Loss: 0.6377
Epoch 1/1... Discriminator Loss: 1.2690... Generator Loss: 0.8086
Epoch 1/1... Discriminator Loss: 1.1579... Generator Loss: 0.9154
Epoch 1/1... Discriminator Loss: 1.2321... Generator Loss: 0.8107
Epoch 1/1... Discriminator Loss: 1.4671... Generator Loss: 0.5773
Epoch 1/1... Discriminator Loss: 1.1203... Generator Loss: 1.1135
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Epoch 1/1... Discriminator Loss: 0.8037... Generator Loss: 2.8179
Epoch 1/1... Discriminator Loss: 0.7498... Generator Loss: 1.4573
Epoch 1/1... Discriminator Loss: 0.8034... Generator Loss: 1.0626
Epoch 1/1... Discriminator Loss: 1.1749... Generator Loss: 0.9500
Epoch 1/1... Discriminator Loss: 0.7546... Generator Loss: 1.8161
Epoch 1/1... Discriminator Loss: 1.0378... Generator Loss: 1.0037
Epoch 1/1... Discriminator Loss: 0.8859... Generator Loss: 1.8344
Epoch 1/1... Discriminator Loss: 0.4835... Generator Loss: 1.9785
Epoch 1/1... Discriminator Loss: 1.4159... Generator Loss: 0.5556
Epoch 1/1... Discriminator Loss: 1.0521... Generator Loss: 1.1209
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Epoch 1/1... Discriminator Loss: 1.2935... Generator Loss: 0.7076
Epoch 1/1... Discriminator Loss: 1.1495... Generator Loss: 0.9002
Epoch 1/1... Discriminator Loss: 1.1910... Generator Loss: 0.9019
Epoch 1/1... Discriminator Loss: 1.3271... Generator Loss: 0.7719
Epoch 1/1... Discriminator Loss: 1.2936... Generator Loss: 0.8062
Epoch 1/1... Discriminator Loss: 1.0669... Generator Loss: 1.2942
Epoch 1/1... Discriminator Loss: 1.3990... Generator Loss: 0.6601
Epoch 1/1... Discriminator Loss: 1.1319... Generator Loss: 0.9115
Epoch 1/1... Discriminator Loss: 1.2635... Generator Loss: 0.7328
Epoch 1/1... Discriminator Loss: 1.2498... Generator Loss: 0.8537
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Epoch 1/1... Discriminator Loss: 0.4763... Generator Loss: 3.6934
Epoch 1/1... Discriminator Loss: 0.8599... Generator Loss: 2.9040
Epoch 1/1... Discriminator Loss: 1.4341... Generator Loss: 0.4334
Epoch 1/1... Discriminator Loss: 0.5611... Generator Loss: 2.3291
Epoch 1/1... Discriminator Loss: 1.2060... Generator Loss: 2.5813
Epoch 1/1... Discriminator Loss: 1.4370... Generator Loss: 1.0813
Epoch 1/1... Discriminator Loss: 0.7619... Generator Loss: 1.8361
Epoch 1/1... Discriminator Loss: 0.6901... Generator Loss: 1.3997
Epoch 1/1... Discriminator Loss: 1.4276... Generator Loss: 0.3926
Epoch 1/1... Discriminator Loss: 1.2209... Generator Loss: 0.9138
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Epoch 1/1... Discriminator Loss: 1.1375... Generator Loss: 0.9678
Epoch 1/1... Discriminator Loss: 1.2782... Generator Loss: 0.6728
Epoch 1/1... Discriminator Loss: 1.3439... Generator Loss: 0.7230
Epoch 1/1... Discriminator Loss: 1.2392... Generator Loss: 0.8083
Epoch 1/1... Discriminator Loss: 1.1983... Generator Loss: 0.9034
Epoch 1/1... Discriminator Loss: 1.2506... Generator Loss: 0.8047
Epoch 1/1... Discriminator Loss: 1.2531... Generator Loss: 0.7212
Epoch 1/1... Discriminator Loss: 1.1347... Generator Loss: 0.9856
Epoch 1/1... Discriminator Loss: 1.1743... Generator Loss: 0.8993
Epoch 1/1... Discriminator Loss: 1.4427... Generator Loss: 1.0051
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Epoch 1/1... Discriminator Loss: 1.3134... Generator Loss: 0.6109
Epoch 1/1... Discriminator Loss: 0.6342... Generator Loss: 1.3578
Epoch 1/1... Discriminator Loss: 1.9686... Generator Loss: 0.3126
Epoch 1/1... Discriminator Loss: 0.8633... Generator Loss: 1.2537
Epoch 1/1... Discriminator Loss: 1.1742... Generator Loss: 1.3636
Epoch 1/1... Discriminator Loss: 1.0201... Generator Loss: 0.9814
Epoch 1/1... Discriminator Loss: 1.0470... Generator Loss: 0.7629
Epoch 1/1... Discriminator Loss: 1.3525... Generator Loss: 0.8284
Epoch 1/1... Discriminator Loss: 0.9219... Generator Loss: 2.1553
Epoch 1/1... Discriminator Loss: 0.9552... Generator Loss: 1.0489
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Epoch 1/1... Discriminator Loss: 1.3418... Generator Loss: 0.8887
Epoch 1/1... Discriminator Loss: 1.1463... Generator Loss: 0.8770
Epoch 1/1... Discriminator Loss: 1.1458... Generator Loss: 0.8652
Epoch 1/1... Discriminator Loss: 1.1300... Generator Loss: 0.8657
Epoch 1/1... Discriminator Loss: 1.2388... Generator Loss: 0.8090
Epoch 1/1... Discriminator Loss: 1.2000... Generator Loss: 1.0023
Epoch 1/1... Discriminator Loss: 1.2345... Generator Loss: 0.7608
Epoch 1/1... Discriminator Loss: 1.2756... Generator Loss: 0.7362
Epoch 1/1... Discriminator Loss: 1.1516... Generator Loss: 0.9630
Epoch 1/1... Discriminator Loss: 1.2605... Generator Loss: 0.8583
Epoch 1/1... Discriminator Loss: 1.3043... Generator Loss: 0.7265
Epoch 1/1... Discriminator Loss: 1.2215... Generator Loss: 0.7134
Epoch 1/1... Discriminator Loss: 1.2023... Generator Loss: 0.8024
Epoch 1/1... Discriminator Loss: 1.1712... Generator Loss: 1.0013
Epoch 1/1... Discriminator Loss: 1.3744... Generator Loss: 0.7237
Epoch 1/1... Discriminator Loss: 1.2811... Generator Loss: 0.7432
Epoch 1/1... Discriminator Loss: 1.3067... Generator Loss: 0.8038
Epoch 1/1... Discriminator Loss: 1.1272... Generator Loss: 0.8624
Epoch 1/1... Discriminator Loss: 1.2941... Generator Loss: 0.7691
Epoch 1/1... Discriminator Loss: 1.2963... Generator Loss: 0.6676
Epoch 1/1... Discriminator Loss: 1.1949... Generator Loss: 0.9066
Epoch 1/1... Discriminator Loss: 1.2745... Generator Loss: 0.7036
Epoch 1/1... Discriminator Loss: 1.1895... Generator Loss: 0.8801
Epoch 1/1... Discriminator Loss: 1.1958... Generator Loss: 0.7370
Epoch 1/1... Discriminator Loss: 1.2296... Generator Loss: 0.9234
Epoch 1/1... Discriminator Loss: 1.2509... Generator Loss: 0.7823
Epoch 1/1... Discriminator Loss: 1.2682... Generator Loss: 0.9778
Epoch 1/1... Discriminator Loss: 1.2394... Generator Loss: 0.8644
Epoch 1/1... Discriminator Loss: 1.2561... Generator Loss: 0.8319
Epoch 1/1... Discriminator Loss: 1.3131... Generator Loss: 0.8226
Epoch 1/1... Discriminator Loss: 1.1604... Generator Loss: 1.0322
Epoch 1/1... Discriminator Loss: 1.2876... Generator Loss: 0.8987
Epoch 1/1... Discriminator Loss: 1.1934... Generator Loss: 0.8565
Epoch 1/1... Discriminator Loss: 1.2107... Generator Loss: 0.8455
Epoch 1/1... Discriminator Loss: 1.2444... Generator Loss: 0.6965
Epoch 1/1... Discriminator Loss: 1.2198... Generator Loss: 0.7813
Epoch 1/1... Discriminator Loss: 1.2872... Generator Loss: 0.7819
Epoch 1/1... Discriminator Loss: 1.2433... Generator Loss: 1.2054
Epoch 1/1... Discriminator Loss: 1.2441... Generator Loss: 0.8284
Epoch 1/1... Discriminator Loss: 1.1960... Generator Loss: 0.8257
Epoch 1/1... Discriminator Loss: 1.2456... Generator Loss: 0.9684
Epoch 1/1... Discriminator Loss: 1.1358... Generator Loss: 0.9565
Epoch 1/1... Discriminator Loss: 1.1620... Generator Loss: 0.9827
Epoch 1/1... Discriminator Loss: 1.4028... Generator Loss: 0.5654
Epoch 1/1... Discriminator Loss: 1.1968... Generator Loss: 0.9351
Epoch 1/1... Discriminator Loss: 1.2786... Generator Loss: 0.7637
Epoch 1/1... Discriminator Loss: 1.2703... Generator Loss: 0.7976
Epoch 1/1... Discriminator Loss: 1.2389... Generator Loss: 0.9729
Epoch 1/1... Discriminator Loss: 1.2294... Generator Loss: 0.8615
Epoch 1/1... Discriminator Loss: 1.2299... Generator Loss: 1.0164
Epoch 1/1... Discriminator Loss: 1.2149... Generator Loss: 0.8090
Epoch 1/1... Discriminator Loss: 1.1789... Generator Loss: 1.0755
Epoch 1/1... Discriminator Loss: 1.3546... Generator Loss: 0.6245
Epoch 1/1... Discriminator Loss: 1.1525... Generator Loss: 0.9337
Epoch 1/1... Discriminator Loss: 1.4143... Generator Loss: 0.5845
Epoch 1/1... Discriminator Loss: 1.3514... Generator Loss: 0.7434
Epoch 1/1... Discriminator Loss: 1.2123... Generator Loss: 0.8417
Epoch 1/1... Discriminator Loss: 1.2058... Generator Loss: 0.9671
Epoch 1/1... Discriminator Loss: 1.1734... Generator Loss: 0.8696
Epoch 1/1... Discriminator Loss: 1.2670... Generator Loss: 0.7732
Epoch 1/1... Discriminator Loss: 1.2574... Generator Loss: 0.8839
Epoch 1/1... Discriminator Loss: 1.2120... Generator Loss: 0.7955
Epoch 1/1... Discriminator Loss: 1.2412... Generator Loss: 1.0547
Epoch 1/1... Discriminator Loss: 1.3076... Generator Loss: 0.7214
Epoch 1/1... Discriminator Loss: 1.3953... Generator Loss: 0.5859
Epoch 1/1... Discriminator Loss: 1.1884... Generator Loss: 0.9028
Epoch 1/1... Discriminator Loss: 1.2726... Generator Loss: 0.8020
Epoch 1/1... Discriminator Loss: 1.2295... Generator Loss: 0.8836
Epoch 1/1... Discriminator Loss: 1.2873... Generator Loss: 0.7151
Epoch 1/1... Discriminator Loss: 1.2527... Generator Loss: 1.0225
Epoch 1/1... Discriminator Loss: 1.2993... Generator Loss: 0.7418
Epoch 1/1... Discriminator Loss: 1.2822... Generator Loss: 0.7246
Epoch 1/1... Discriminator Loss: 1.2834... Generator Loss: 0.7524
Epoch 1/1... Discriminator Loss: 1.2895... Generator Loss: 0.6809
Epoch 1/1... Discriminator Loss: 1.2503... Generator Loss: 0.9515
Epoch 1/1... Discriminator Loss: 1.3256... Generator Loss: 0.7161
Epoch 1/1... Discriminator Loss: 1.2366... Generator Loss: 0.7863
Epoch 1/1... Discriminator Loss: 1.2829... Generator Loss: 0.7616
Epoch 1/1... Discriminator Loss: 1.3835... Generator Loss: 0.5594
Epoch 1/1... Discriminator Loss: 1.2990... Generator Loss: 0.7195
Epoch 1/1... Discriminator Loss: 1.2696... Generator Loss: 0.8574
Epoch 1/1... Discriminator Loss: 1.2835... Generator Loss: 0.6749
Epoch 1/1... Discriminator Loss: 1.2666... Generator Loss: 0.7212
Epoch 1/1... Discriminator Loss: 1.2839... Generator Loss: 1.0050
Epoch 1/1... Discriminator Loss: 1.2541... Generator Loss: 0.8994
Epoch 1/1... Discriminator Loss: 1.1739... Generator Loss: 0.8962
Epoch 1/1... Discriminator Loss: 1.3380... Generator Loss: 0.6434
Epoch 1/1... Discriminator Loss: 1.2763... Generator Loss: 0.7533
Epoch 1/1... Discriminator Loss: 1.2235... Generator Loss: 0.9043
Epoch 1/1... Discriminator Loss: 1.1542... Generator Loss: 0.8316
Epoch 1/1... Discriminator Loss: 1.2343... Generator Loss: 0.8031
Epoch 1/1... Discriminator Loss: 1.2401... Generator Loss: 0.7510
Epoch 1/1... Discriminator Loss: 1.2529... Generator Loss: 0.9346
Epoch 1/1... Discriminator Loss: 1.1882... Generator Loss: 0.9331
Epoch 1/1... Discriminator Loss: 1.2344... Generator Loss: 0.8542
Epoch 1/1... Discriminator Loss: 1.2795... Generator Loss: 0.8599
Epoch 1/1... Discriminator Loss: 1.2624... Generator Loss: 0.8614
Epoch 1/1... Discriminator Loss: 1.3537... Generator Loss: 0.6526
Epoch 1/1... Discriminator Loss: 1.3583... Generator Loss: 0.6306
Epoch 1/1... Discriminator Loss: 1.3341... Generator Loss: 0.6431
Epoch 1/1... Discriminator Loss: 1.2125... Generator Loss: 0.8902
Epoch 1/1... Discriminator Loss: 1.2759... Generator Loss: 0.6912
Epoch 1/1... Discriminator Loss: 1.1479... Generator Loss: 0.9008
Epoch 1/1... Discriminator Loss: 1.2822... Generator Loss: 0.7225
Epoch 1/1... Discriminator Loss: 1.3472... Generator Loss: 0.8968
Epoch 1/1... Discriminator Loss: 1.3449... Generator Loss: 0.6420
Epoch 1/1... Discriminator Loss: 1.3792... Generator Loss: 0.6204
Epoch 1/1... Discriminator Loss: 1.1045... Generator Loss: 0.9411
Epoch 1/1... Discriminator Loss: 1.2673... Generator Loss: 0.9139
Epoch 1/1... Discriminator Loss: 1.3654... Generator Loss: 0.7915
Epoch 1/1... Discriminator Loss: 1.3189... Generator Loss: 0.9458
Epoch 1/1... Discriminator Loss: 1.2558... Generator Loss: 0.7544
Epoch 1/1... Discriminator Loss: 1.4409... Generator Loss: 0.8734
Epoch 1/1... Discriminator Loss: 1.3301... Generator Loss: 0.6710
Epoch 1/1... Discriminator Loss: 1.2409... Generator Loss: 0.7647
Epoch 1/1... Discriminator Loss: 1.3788... Generator Loss: 0.6116
Epoch 1/1... Discriminator Loss: 1.2557... Generator Loss: 0.8301
Epoch 1/1... Discriminator Loss: 1.3118... Generator Loss: 0.8733
Epoch 1/1... Discriminator Loss: 1.4044... Generator Loss: 0.5975
Epoch 1/1... Discriminator Loss: 1.2760... Generator Loss: 0.8378
Epoch 1/1... Discriminator Loss: 1.3765... Generator Loss: 0.6013
Epoch 1/1... Discriminator Loss: 1.2027... Generator Loss: 1.0133
Epoch 1/1... Discriminator Loss: 1.3391... Generator Loss: 0.9434
Epoch 1/1... Discriminator Loss: 1.2306... Generator Loss: 0.8477
Epoch 1/1... Discriminator Loss: 1.3585... Generator Loss: 0.7692
Epoch 1/1... Discriminator Loss: 1.3225... Generator Loss: 0.6521
Epoch 1/1... Discriminator Loss: 1.1411... Generator Loss: 0.9006
Epoch 1/1... Discriminator Loss: 1.2169... Generator Loss: 0.8365
Epoch 1/1... Discriminator Loss: 1.3229... Generator Loss: 0.8102
Epoch 1/1... Discriminator Loss: 1.2508... Generator Loss: 0.7624
Epoch 1/1... Discriminator Loss: 1.1610... Generator Loss: 0.8847
Epoch 1/1... Discriminator Loss: 1.3173... Generator Loss: 0.7170
Epoch 1/1... Discriminator Loss: 1.3153... Generator Loss: 0.7004
Epoch 1/1... Discriminator Loss: 1.1453... Generator Loss: 0.8462
Epoch 1/1... Discriminator Loss: 1.2889... Generator Loss: 0.6363
Epoch 1/1... Discriminator Loss: 1.1985... Generator Loss: 0.9510
Epoch 1/1... Discriminator Loss: 1.1709... Generator Loss: 0.9918
Epoch 1/1... Discriminator Loss: 1.2167... Generator Loss: 0.9489
Epoch 1/1... Discriminator Loss: 1.1924... Generator Loss: 0.8258
Epoch 1/1... Discriminator Loss: 1.3603... Generator Loss: 0.7007
Epoch 1/1... Discriminator Loss: 1.2698... Generator Loss: 0.7151
Epoch 1/1... Discriminator Loss: 1.2735... Generator Loss: 0.7807
Epoch 1/1... Discriminator Loss: 1.2107... Generator Loss: 0.8548
Epoch 1/1... Discriminator Loss: 1.3480... Generator Loss: 0.6298
Epoch 1/1... Discriminator Loss: 1.1510... Generator Loss: 0.9008
Epoch 1/1... Discriminator Loss: 1.3147... Generator Loss: 0.7349
Epoch 1/1... Discriminator Loss: 1.2994... Generator Loss: 0.6445
Epoch 1/1... Discriminator Loss: 1.3777... Generator Loss: 0.6498
Epoch 1/1... Discriminator Loss: 1.2334... Generator Loss: 0.8822
Epoch 1/1... Discriminator Loss: 1.1654... Generator Loss: 0.8656
Epoch 1/1... Discriminator Loss: 1.3459... Generator Loss: 0.7017
Epoch 1/1... Discriminator Loss: 1.2702... Generator Loss: 0.8027
Epoch 1/1... Discriminator Loss: 1.3071... Generator Loss: 0.7644
Epoch 1/1... Discriminator Loss: 1.0440... Generator Loss: 1.1142
Epoch 1/1... Discriminator Loss: 1.2213... Generator Loss: 0.6901
Epoch 1/1... Discriminator Loss: 1.2109... Generator Loss: 0.7930
Epoch 1/1... Discriminator Loss: 1.2043... Generator Loss: 0.9285
Epoch 1/1... Discriminator Loss: 1.2700... Generator Loss: 0.7622
Epoch 1/1... Discriminator Loss: 1.2547... Generator Loss: 0.8141
Epoch 1/1... Discriminator Loss: 1.2756... Generator Loss: 0.7777
Epoch 1/1... Discriminator Loss: 1.2577... Generator Loss: 0.8112
Epoch 1/1... Discriminator Loss: 1.1073... Generator Loss: 1.0375
Epoch 1/1... Discriminator Loss: 1.3135... Generator Loss: 1.0133
Epoch 1/1... Discriminator Loss: 1.3236... Generator Loss: 0.7594
Epoch 1/1... Discriminator Loss: 1.1902... Generator Loss: 0.9249
Epoch 1/1... Discriminator Loss: 1.2555... Generator Loss: 0.7848
Epoch 1/1... Discriminator Loss: 1.2462... Generator Loss: 1.0294
Epoch 1/1... Discriminator Loss: 1.3386... Generator Loss: 0.7217
Epoch 1/1... Discriminator Loss: 1.2040... Generator Loss: 0.8471
Epoch 1/1... Discriminator Loss: 1.2707... Generator Loss: 0.8927
Epoch 1/1... Discriminator Loss: 1.2512... Generator Loss: 0.8479
Epoch 1/1... Discriminator Loss: 1.2212... Generator Loss: 0.9284
Epoch 1/1... Discriminator Loss: 1.2454... Generator Loss: 0.7225
Epoch 1/1... Discriminator Loss: 1.2608... Generator Loss: 0.8670
Epoch 1/1... Discriminator Loss: 1.1918... Generator Loss: 0.8730
Epoch 1/1... Discriminator Loss: 1.2961... Generator Loss: 0.7328
Epoch 1/1... Discriminator Loss: 1.2402... Generator Loss: 0.7342
Epoch 1/1... Discriminator Loss: 1.3149... Generator Loss: 0.7735
Epoch 1/1... Discriminator Loss: 1.3446... Generator Loss: 0.7353
Epoch 1/1... Discriminator Loss: 1.3511... Generator Loss: 0.8464
Epoch 1/1... Discriminator Loss: 1.3197... Generator Loss: 0.6658
Epoch 1/1... Discriminator Loss: 1.2568... Generator Loss: 0.9647
Epoch 1/1... Discriminator Loss: 1.3220... Generator Loss: 0.7075
Epoch 1/1... Discriminator Loss: 1.2371... Generator Loss: 0.8295
Epoch 1/1... Discriminator Loss: 1.3614... Generator Loss: 0.6148
Epoch 1/1... Discriminator Loss: 1.2581... Generator Loss: 0.8213
Epoch 1/1... Discriminator Loss: 1.1281... Generator Loss: 1.0565
Epoch 1/1... Discriminator Loss: 1.2517... Generator Loss: 0.8307
Epoch 1/1... Discriminator Loss: 1.2418... Generator Loss: 0.7649
Epoch 1/1... Discriminator Loss: 1.3343... Generator Loss: 0.6299
Epoch 1/1... Discriminator Loss: 1.2835... Generator Loss: 0.8511
Epoch 1/1... Discriminator Loss: 1.4214... Generator Loss: 0.6783
Epoch 1/1... Discriminator Loss: 1.3684... Generator Loss: 0.7420
Epoch 1/1... Discriminator Loss: 1.3148... Generator Loss: 0.8970
Epoch 1/1... Discriminator Loss: 1.2345... Generator Loss: 0.7995
Epoch 1/1... Discriminator Loss: 1.2831... Generator Loss: 0.8063
Epoch 1/1... Discriminator Loss: 1.2559... Generator Loss: 0.9892
Epoch 1/1... Discriminator Loss: 1.3636... Generator Loss: 0.7307
Epoch 1/1... Discriminator Loss: 1.2561... Generator Loss: 0.7836
Epoch 1/1... Discriminator Loss: 1.2419... Generator Loss: 0.8234
Epoch 1/1... Discriminator Loss: 1.2545... Generator Loss: 0.8955
Epoch 1/1... Discriminator Loss: 1.1565... Generator Loss: 0.8420
Epoch 1/1... Discriminator Loss: 1.3079... Generator Loss: 0.6975
Epoch 1/1... Discriminator Loss: 1.2940... Generator Loss: 0.7847
Epoch 1/1... Discriminator Loss: 1.2779... Generator Loss: 0.7733
Epoch 1/1... Discriminator Loss: 1.2626... Generator Loss: 0.7945
Epoch 1/1... Discriminator Loss: 1.3285... Generator Loss: 0.6547
Epoch 1/1... Discriminator Loss: 1.3574... Generator Loss: 0.7285
Epoch 1/1... Discriminator Loss: 1.3453... Generator Loss: 0.8444
Epoch 1/1... Discriminator Loss: 1.4676... Generator Loss: 0.6072
Epoch 1/1... Discriminator Loss: 1.4057... Generator Loss: 0.6477
Epoch 1/1... Discriminator Loss: 1.2224... Generator Loss: 0.7050
Epoch 1/1... Discriminator Loss: 1.2587... Generator Loss: 0.8138
Epoch 1/1... Discriminator Loss: 1.2907... Generator Loss: 0.7333
Epoch 1/1... Discriminator Loss: 1.3035... Generator Loss: 0.6846
Epoch 1/1... Discriminator Loss: 1.2777... Generator Loss: 0.8440
Epoch 1/1... Discriminator Loss: 1.2014... Generator Loss: 0.9885
Epoch 1/1... Discriminator Loss: 1.1829... Generator Loss: 0.9147
Epoch 1/1... Discriminator Loss: 1.2528... Generator Loss: 0.8582
Epoch 1/1... Discriminator Loss: 1.3550... Generator Loss: 0.8125
Epoch 1/1... Discriminator Loss: 1.2284... Generator Loss: 0.8925
Epoch 1/1... Discriminator Loss: 1.2656... Generator Loss: 0.7194
Epoch 1/1... Discriminator Loss: 1.2574... Generator Loss: 0.7223
Epoch 1/1... Discriminator Loss: 1.2133... Generator Loss: 0.9045
Epoch 1/1... Discriminator Loss: 1.2819... Generator Loss: 0.8232
Epoch 1/1... Discriminator Loss: 1.1603... Generator Loss: 0.9398
Epoch 1/1... Discriminator Loss: 1.3593... Generator Loss: 0.7195
Epoch 1/1... Discriminator Loss: 1.2189... Generator Loss: 0.9096
Epoch 1/1... Discriminator Loss: 1.3088... Generator Loss: 0.6980
Epoch 1/1... Discriminator Loss: 1.2611... Generator Loss: 0.7402
Epoch 1/1... Discriminator Loss: 1.2638... Generator Loss: 0.8798
Epoch 1/1... Discriminator Loss: 1.2225... Generator Loss: 0.8385
Epoch 1/1... Discriminator Loss: 1.1935... Generator Loss: 0.8783
Epoch 1/1... Discriminator Loss: 1.2215... Generator Loss: 0.7632
Epoch 1/1... Discriminator Loss: 1.3916... Generator Loss: 0.6573
Epoch 1/1... Discriminator Loss: 1.2251... Generator Loss: 0.8166
Epoch 1/1... Discriminator Loss: 1.3174... Generator Loss: 0.6828
Epoch 1/1... Discriminator Loss: 1.1850... Generator Loss: 0.8604
Epoch 1/1... Discriminator Loss: 1.2215... Generator Loss: 0.8581
Epoch 1/1... Discriminator Loss: 1.3651... Generator Loss: 0.7028
Epoch 1/1... Discriminator Loss: 1.2343... Generator Loss: 0.6881
Epoch 1/1... Discriminator Loss: 1.4282... Generator Loss: 0.6395
Epoch 1/1... Discriminator Loss: 1.4448... Generator Loss: 0.5246
Epoch 1/1... Discriminator Loss: 1.3250... Generator Loss: 0.6538
Epoch 1/1... Discriminator Loss: 1.2697... Generator Loss: 0.7168
Epoch 1/1... Discriminator Loss: 1.4392... Generator Loss: 0.6455
Epoch 1/1... Discriminator Loss: 1.3896... Generator Loss: 0.8594
Epoch 1/1... Discriminator Loss: 1.3067... Generator Loss: 0.8417
Epoch 1/1... Discriminator Loss: 1.2555... Generator Loss: 0.7461
Epoch 1/1... Discriminator Loss: 1.1362... Generator Loss: 0.9917
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Epoch 1/1... Discriminator Loss: 0.8976... Generator Loss: 1.0207
Epoch 1/1... Discriminator Loss: 1.0339... Generator Loss: 0.8152
Epoch 1/1... Discriminator Loss: 1.4564... Generator Loss: 2.1014
Epoch 1/1... Discriminator Loss: 0.8972... Generator Loss: 0.8138
Epoch 1/1... Discriminator Loss: 1.4893... Generator Loss: 0.9835
Epoch 1/1... Discriminator Loss: 0.8413... Generator Loss: 1.6962
Epoch 1/1... Discriminator Loss: 0.5920... Generator Loss: 1.9877
Epoch 1/1... Discriminator Loss: 1.3549... Generator Loss: 0.8287
Epoch 1/1... Discriminator Loss: 0.9701... Generator Loss: 1.4719
Epoch 1/1... Discriminator Loss: 1.7473... Generator Loss: 0.2832
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Epoch 1/1... Discriminator Loss: 1.3051... Generator Loss: 0.6664
Epoch 1/1... Discriminator Loss: 1.1990... Generator Loss: 0.9115
Epoch 1/1... Discriminator Loss: 1.2568... Generator Loss: 0.9162
Epoch 1/1... Discriminator Loss: 1.2713... Generator Loss: 0.7116
Epoch 1/1... Discriminator Loss: 1.3092... Generator Loss: 0.8205
Epoch 1/1... Discriminator Loss: 1.1657... Generator Loss: 0.9394
Epoch 1/1... Discriminator Loss: 1.3399... Generator Loss: 0.7263
Epoch 1/1... Discriminator Loss: 1.3405... Generator Loss: 0.7249
Epoch 1/1... Discriminator Loss: 1.3900... Generator Loss: 0.6561
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Epoch 1/1... Discriminator Loss: 0.9641... Generator Loss: 2.2098
Epoch 1/1... Discriminator Loss: 0.6619... Generator Loss: 1.7631
Epoch 1/1... Discriminator Loss: 1.7389... Generator Loss: 0.3489
Epoch 1/1... Discriminator Loss: 0.8085... Generator Loss: 0.7638
Epoch 1/1... Discriminator Loss: 1.3372... Generator Loss: 0.6536
Epoch 1/1... Discriminator Loss: 0.6546... Generator Loss: 1.7619
Epoch 1/1... Discriminator Loss: 0.7340... Generator Loss: 3.0369
Epoch 1/1... Discriminator Loss: 0.4637... Generator Loss: 3.0855
Epoch 1/1... Discriminator Loss: 0.9980... Generator Loss: 1.3550
Epoch 1/1... Discriminator Loss: 1.2894... Generator Loss: 1.0548
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Epoch 1/1... Discriminator Loss: 1.1733... Generator Loss: 0.9887
Epoch 1/1... Discriminator Loss: 1.2170... Generator Loss: 0.9105
Epoch 1/1... Discriminator Loss: 1.1480... Generator Loss: 0.9113
Epoch 1/1... Discriminator Loss: 1.2753... Generator Loss: 0.8082
Epoch 1/1... Discriminator Loss: 1.1288... Generator Loss: 0.9808
Epoch 1/1... Discriminator Loss: 1.2155... Generator Loss: 0.8307
Epoch 1/1... Discriminator Loss: 1.2192... Generator Loss: 0.7617
Epoch 1/1... Discriminator Loss: 1.3074... Generator Loss: 0.7121
Epoch 1/1... Discriminator Loss: 1.3978... Generator Loss: 0.6453
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Epoch 1/1... Discriminator Loss: 1.0702... Generator Loss: 1.8074
Epoch 1/1... Discriminator Loss: 0.7481... Generator Loss: 1.2411
Epoch 1/1... Discriminator Loss: 0.9733... Generator Loss: 0.9274
Epoch 1/1... Discriminator Loss: 0.8929... Generator Loss: 1.3280
Epoch 1/1... Discriminator Loss: 0.9012... Generator Loss: 1.4650
Epoch 1/1... Discriminator Loss: 1.1469... Generator Loss: 0.7512
Epoch 1/1... Discriminator Loss: 1.3988... Generator Loss: 0.5045
Epoch 1/1... Discriminator Loss: 0.9468... Generator Loss: 0.9746
Epoch 1/1... Discriminator Loss: 0.9534... Generator Loss: 1.1771
Epoch 1/1... Discriminator Loss: 1.1112... Generator Loss: 0.9260
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Epoch 1/1... Discriminator Loss: 1.2133... Generator Loss: 0.9785
Epoch 1/1... Discriminator Loss: 1.2818... Generator Loss: 0.8304
Epoch 1/1... Discriminator Loss: 1.4204... Generator Loss: 0.7187
Epoch 1/1... Discriminator Loss: 1.3347... Generator Loss: 0.8390
Epoch 1/1... Discriminator Loss: 1.3558... Generator Loss: 0.5932
Epoch 1/1... Discriminator Loss: 1.2349... Generator Loss: 0.7762
Epoch 1/1... Discriminator Loss: 1.2278... Generator Loss: 0.8015
Epoch 1/1... Discriminator Loss: 1.1948... Generator Loss: 0.7749
Epoch 1/1... Discriminator Loss: 1.2196... Generator Loss: 0.6907
Epoch 1/1... Discriminator Loss: 1.2701... Generator Loss: 0.7244
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Epoch 1/1... Discriminator Loss: 0.7895... Generator Loss: 1.1027
Epoch 1/1... Discriminator Loss: 0.4508... Generator Loss: 2.6634
Epoch 1/1... Discriminator Loss: 1.2210... Generator Loss: 0.5840
Epoch 1/1... Discriminator Loss: 0.7872... Generator Loss: 2.0381
Epoch 1/1... Discriminator Loss: 0.8713... Generator Loss: 1.0078
Epoch 1/1... Discriminator Loss: 1.1858... Generator Loss: 1.0786
Epoch 1/1... Discriminator Loss: 1.0130... Generator Loss: 0.7849
Epoch 1/1... Discriminator Loss: 1.2302... Generator Loss: 0.6615
Epoch 1/1... Discriminator Loss: 1.6263... Generator Loss: 0.6630
Epoch 1/1... Discriminator Loss: 1.1035... Generator Loss: 0.8263
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Epoch 1/1... Discriminator Loss: 1.3102... Generator Loss: 0.8373
Epoch 1/1... Discriminator Loss: 1.2455... Generator Loss: 0.7058
Epoch 1/1... Discriminator Loss: 1.3059... Generator Loss: 0.7478
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Epoch 1/1... Discriminator Loss: 0.9085... Generator Loss: 1.2352
Epoch 1/1... Discriminator Loss: 0.5260... Generator Loss: 1.4176
Epoch 1/1... Discriminator Loss: 1.1621... Generator Loss: 0.7801
Epoch 1/1... Discriminator Loss: 1.1715... Generator Loss: 0.9836
Epoch 1/1... Discriminator Loss: 0.9233... Generator Loss: 1.6091
Epoch 1/1... Discriminator Loss: 1.0948... Generator Loss: 1.3630
>>>>>>> cdc9c170306e1c11a2ff59110cb5c43cb0bd4250

Submitting This Project

When submitting this project, make sure to run all the cells before saving the notebook. Save the notebook file as "dlnd_face_generation.ipynb" and save it as a HTML file under "File" -> "Download as". Include the "helper.py" and "problem_unittests.py" files in your submission.